Deck 5: Regression With a Single Regressor: Hypothesis Tests and Confidence Intervals

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سؤال
In general,the t-statistic has the following form:

A) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
B) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
C) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
D) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
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سؤال
Consider the following regression line: <strong>Consider the following regression line:   = 698.9 - 2.28 × STR.You are told that the t-statistic on the slope coefficient is 4.38.What is the standard error of the slope coefficient?</strong> A)0.52 B)1.96 C)-1.96 D)4.38 <div style=padding-top: 35px> = 698.9 - 2.28 × STR.You are told that the t-statistic on the slope coefficient is 4.38.What is the standard error of the slope coefficient?

A)0.52
B)1.96
C)-1.96
D)4.38
سؤال
The error term is homoskedastic if

A)var(ui <strong>The error term is homoskedastic if</strong> A)var(ui   is constant for i = 1,…,n. B)var(ui   depends on x. C)Xi is normally distributed. D)there are no outliers. <div style=padding-top: 35px> is constant for i = 1,…,n.
B)var(ui <strong>The error term is homoskedastic if</strong> A)var(ui   is constant for i = 1,…,n. B)var(ui   depends on x. C)Xi is normally distributed. D)there are no outliers. <div style=padding-top: 35px> depends on x.
C)Xi is normally distributed.
D)there are no outliers.
سؤال
The homoskedasticity-only estimator of the variance of <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)   <div style=padding-top: 35px> 1 is

A) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
B) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
C) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
D) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)   <div style=padding-top: 35px>
سؤال
The t-statistic is calculated by dividing

A)the OLS estimator by its standard error.
B)the slope by the standard deviation of the explanatory variable.
C)the estimator minus its hypothesized value by the standard error of the estimator.
D)the slope by 1.96.
سؤال
Under the least squares assumptions (zero conditional mean for the error term,Xi and Yi being i.i.d. ,and Xi and ui having finite fourth moments),the OLS estimator for the slope and intercept

A)has an exact normal distribution for n > 15.
B)is BLUE.
C)has a normal distribution even in small samples.
D)is unbiased.
سؤال
When estimating a demand function for a good where quantity demanded is a linear function of the price,you should

A)not include an intercept because the price of the good is never zero.
B)use a one-sided alternative hypothesis to check the influence of price on quantity.
C)use a two-sided alternative hypothesis to check the influence of price on quantity.
D)reject the idea that price determines demand unless the coefficient is at least 1.96.
سؤال
The confidence interval for the sample regression function slope

A)can be used to conduct a test about a hypothesized population regression function slope.
B)can be used to compare the value of the slope relative to that of the intercept.
C)adds and subtracts 1.96 from the slope.
D)allows you to make statements about the economic importance of your estimate.
سؤال
The only difference between a one- and two-sided hypothesis test is

A)the null hypothesis.
B)dependent on the sample size n.
C)the sign of the slope coefficient.
D)how you interpret the t-statistic.
سؤال
Heteroskedasticity means that

A)homogeneity cannot be assumed automatically for the model.
B)the variance of the error term is not constant.
C)the observed units have different preferences.
D)agents are not all rational.
سؤال
One of the following steps is not required as a step to test for the null hypothesis:

A)compute the standard error of <strong>One of the following steps is not required as a step to test for the null hypothesis:</strong> A)compute the standard error of   1. B)test for the errors to be normally distributed. C)compute the t-statistic. D)compute the p-value. <div style=padding-top: 35px> 1.
B)test for the errors to be normally distributed.
C)compute the t-statistic.
D)compute the p-value.
سؤال
If the absolute value of your calculated t-statistic exceeds the critical value from the standard normal distribution,you can

A)reject the null hypothesis.
B)safely assume that your regression results are significant.
C)reject the assumption that the error terms are homoskedastic.
D)conclude that most of the actual values are very close to the regression line.
سؤال
Imagine that you were told that the t-statistic for the slope coefficient of the regression line <strong>Imagine that you were told that the t-statistic for the slope coefficient of the regression line   = 698.9 - 2.28 × STR was 4.38.What are the units of measurement for the t-statistic?</strong> A)points of the test score B)number of students per teacher C)   D)standard deviations <div style=padding-top: 35px> = 698.9 - 2.28 × STR was 4.38.What are the units of measurement for the t-statistic?

A)points of the test score
B)number of students per teacher
C) <strong>Imagine that you were told that the t-statistic for the slope coefficient of the regression line   = 698.9 - 2.28 × STR was 4.38.What are the units of measurement for the t-statistic?</strong> A)points of the test score B)number of students per teacher C)   D)standard deviations <div style=padding-top: 35px>
D)standard deviations
سؤال
A binary variable is often called a

A)dummy variable.
B)dependent variable.
C)residual.
D)power of a test.
سؤال
Finding a small value of the p-value (e.g.less than 5%)

A)indicates evidence in favor of the null hypothesis.
B)implies that the t-statistic is less than 1.96.
C)indicates evidence in against the null hypothesis.
D)will only happen roughly one in twenty samples.
سؤال
In the presence of heteroskedasticity,and assuming that the usual least squares assumptions hold,the OLS estimator is

A)efficient.
B)BLUE.
C)unbiased and consistent.
D)unbiased but not consistent.
سؤال
The p-value for a one-sided left-tail test is given by

A)Pr(Z - tact )= φ(tact).
B)Pr(Z < tact )= φ(tact).
C)Pr(Z < tact )< 1.645.
D)cannot be calculated,since probabilities must always be positive.
سؤال
The construction of the t-statistic for a one- and a two-sided hypothesis

A)depends on the critical value from the appropriate distribution.
B)is the same.
C)is different since the critical value must be 1.645 for the one-sided hypothesis,but 1.96 for the two-sided hypothesis (using a 5% probability for the Type I error).
D)uses ±1.96 for the two-sided test,but only +1.96 for the one-sided test.
سؤال
The proof that OLS is BLUE requires all of the following assumptions with the exception of:

A)the errors are homoskedastic.
B)the errors are normally distributed.
C)E(ui <strong>The proof that OLS is BLUE requires all of the following assumptions with the exception of:</strong> A)the errors are homoskedastic. B)the errors are normally distributed. C)E(ui   . D)large outliers are unlikely. <div style=padding-top: 35px> .
D)large outliers are unlikely.
سؤال
With heteroskedastic errors,the weighted least squares estimator is BLUE.You should use OLS with heteroskedasticity-robust standard errors because

A)this method is simpler.
B)the exact form of the conditional variance is rarely known.
C)the Gauss-Markov theorem holds.
D)your spreadsheet program does not have a command for weighted least squares.
سؤال
You extract approximately 5,000 observations from the Current Population Survey (CPS)and estimate the following regression function: <strong>You extract approximately 5,000 observations from the Current Population Survey (CPS)and estimate the following regression function:   = 3.32 - 0.45   Age,R2= 0.02,SER = 8.66 (1.00)(0.04) Where ahe is average hourly earnings,and Age is the individual's age.Given the specification,your 95% confidence interval for the effect of changing age by 5 years is approximately</strong> A)[$1.96,$2.54] B)[$2.32,$4.32] C)[$1.35,$5.30] D)cannot be determined given the information provided <div style=padding-top: 35px> = 3.32 - 0.45 <strong>You extract approximately 5,000 observations from the Current Population Survey (CPS)and estimate the following regression function:   = 3.32 - 0.45   Age,R2= 0.02,SER = 8.66 (1.00)(0.04) Where ahe is average hourly earnings,and Age is the individual's age.Given the specification,your 95% confidence interval for the effect of changing age by 5 years is approximately</strong> A)[$1.96,$2.54] B)[$2.32,$4.32] C)[$1.35,$5.30] D)cannot be determined given the information provided <div style=padding-top: 35px> Age,R2= 0.02,SER = 8.66 (1.00)(0.04)
Where ahe is average hourly earnings,and Age is the individual's age.Given the specification,your 95% confidence interval for the effect of changing age by 5 years is approximately

A)[$1.96,$2.54]
B)[$2.32,$4.32]
C)[$1.35,$5.30]
D)cannot be determined given the information provided
سؤال
Using the textbook example of 420 California school districts and the regression of testscores on the student-teacher ratio,you find that the standard error on the slope coefficient is 0.51 when using the heteroskedasticity robust formula,while it is 0.48 when employing the homoskedasticity only formula.When calculating the t-statistic,the recommended procedure is to

A)use the homoskedasticity only formula because the t-statistic becomes larger
B)first test for homoskedasticity of the errors and then make a decision
C)use the heteroskedasticity robust formula
D)make a decision depending on how much different the estimate of the slope is under the two procedures
سؤال
You recall from one of your earlier lectures in macroeconomics that the per capita income depends on the savings rate of the country: those who save more end up with a higher standard of living.To test this theory,you collect data from the Penn World Tables on GDP per worker relative to the United States (RelProd)in 1990 and the average investment share of GDP from 1980-1990 (SK),remembering that investment equals saving.The regression results in the following output: You recall from one of your earlier lectures in macroeconomics that the per capita income depends on the savings rate of the country: those who save more end up with a higher standard of living.To test this theory,you collect data from the Penn World Tables on GDP per worker relative to the United States (RelProd)in 1990 and the average investment share of GDP from 1980-1990 (SK),remembering that investment equals saving.The regression results in the following output:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.38) (a)Interpret the regression results carefully. (b)Calculate the t-statistics to determine whether the two coefficients are significantly different from zero.Justify the use of a one-sided or two-sided test. (c)You accidentally forget to use the heteroskedasticity-robust standard errors option in your regression package and estimate the equation using homoskedasticity-only standard errors.This changes the results as follows:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.26) You are delighted to find that the coefficients have not changed at all and that your results have become even more significant.Why haven't the coefficients changed? Are the results really more significant? Explain. (d)Upon reflection you think about the advantages of OLS with and without homoskedasticity-only standard errors.What are these advantages? Is it likely that the error terms would be heteroskedastic in this situation?<div style=padding-top: 35px> = -0.08 + 2.44×SK,R2=0.46,SER = 0.21
(0.04)(0.38)
(a)Interpret the regression results carefully.
(b)Calculate the t-statistics to determine whether the two coefficients are significantly different from zero.Justify the use of a one-sided or two-sided test.
(c)You accidentally forget to use the heteroskedasticity-robust standard errors option in your regression package and estimate the equation using homoskedasticity-only standard errors.This changes the results as follows: You recall from one of your earlier lectures in macroeconomics that the per capita income depends on the savings rate of the country: those who save more end up with a higher standard of living.To test this theory,you collect data from the Penn World Tables on GDP per worker relative to the United States (RelProd)in 1990 and the average investment share of GDP from 1980-1990 (SK),remembering that investment equals saving.The regression results in the following output:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.38) (a)Interpret the regression results carefully. (b)Calculate the t-statistics to determine whether the two coefficients are significantly different from zero.Justify the use of a one-sided or two-sided test. (c)You accidentally forget to use the heteroskedasticity-robust standard errors option in your regression package and estimate the equation using homoskedasticity-only standard errors.This changes the results as follows:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.26) You are delighted to find that the coefficients have not changed at all and that your results have become even more significant.Why haven't the coefficients changed? Are the results really more significant? Explain. (d)Upon reflection you think about the advantages of OLS with and without homoskedasticity-only standard errors.What are these advantages? Is it likely that the error terms would be heteroskedastic in this situation?<div style=padding-top: 35px> = -0.08 + 2.44×SK,R2=0.46,SER = 0.21
(0.04)(0.26)
You are delighted to find that the coefficients have not changed at all and that your results have become even more significant.Why haven't the coefficients changed? Are the results really more significant? Explain.
(d)Upon reflection you think about the advantages of OLS with and without homoskedasticity-only standard errors.What are these advantages? Is it likely that the error terms would be heteroskedastic in this situation?
سؤال
You have obtained measurements of height in inches of 29 female and 81 male students (Studenth)at your university.A regression of the height on a constant and a binary variable (BFemme),which takes a value of one for females and is zero otherwise,yields the following result: You have obtained measurements of height in inches of 29 female and 81 male students (Studenth)at your university.A regression of the height on a constant and a binary variable (BFemme),which takes a value of one for females and is zero otherwise,yields the following result:   = 71.0 - 4.84×BFemme ,R2 = 0.40,SER = 2.0 (0.3)(0.57) (a)What is the interpretation of the intercept? What is the interpretation of the slope? How tall are females,on average? (b)Test the hypothesis that females,on average,are shorter than males,at the 1% level. (c)Is it likely that the error term is homoskedastic here?<div style=padding-top: 35px> = 71.0 - 4.84×BFemme ,R2 = 0.40,SER = 2.0
(0.3)(0.57)
(a)What is the interpretation of the intercept? What is the interpretation of the slope? How tall are females,on average?
(b)Test the hypothesis that females,on average,are shorter than males,at the 1% level.
(c)Is it likely that the error term is homoskedastic here?
سؤال
Explain carefully the relationship between a confidence interval,a one-sided hypothesis test,and a two-sided hypothesis test.What is the unit of measurement of the t-statistic?
سؤال
(Continuation of the Purchasing Power Parity question from Chapter 4)The news-magazine The Economist regularly publishes data on the so called Big Mac index and exchange rates between countries.The data for 30 countries from the April 29,2000 issue is listed below:
Price of Actual Exchange Rate
Country Currency Big Mac per U.S.dollar
Indonesia Rupiah 14,500 7,945
Italy Lira 4,500 2,088
South Korea Won 3,000 1,108
Chile Peso 1,260 514
Spain Peseta 375 179
Hungary Forint 339 279
Japan Yen 294 106
Taiwan Dollar 70 30.6
Thailand Baht 55 38.0
Czech Rep.Crown 54.37 39.1
Russia Ruble 39.50 28.5
Denmark Crown 24.75 8.04
Sweden Crown 24.0 8.84
Mexico Peso 20.9 9.41
France Franc 18.5 7.07
Israel Shekel 14.5 4.05
China Yuan 9.90 8.28
South Africa Rand 9.0 6.72
Switzerland Franc 5.90 1.70
Poland Zloty 5.50 4.30
Germany Mark 4.99 2.11
Malaysia Dollar 4.52 3.80
New Zealand Dollar 3.40 2.01
Singapore Dollar 3.20 1.70
Brazil Real 2.95 1.79
Canada Dollar 2.85 1.47
Australia Dollar 2.59 1.68
Argentina Peso 2.50 1.00
Britain Pound 1.90 0.63
United States Dollar 2.51
The concept of purchasing power parity or PPP ("the idea that similar foreign and domestic goods … should have the same price in terms of the same currency," Abel,A.and B.Bernanke,Macroeconomics,4th edition,Boston: Addison Wesley,476)suggests that the ratio of the Big Mac priced in the local currency to the U.S.dollar price should equal the exchange rate between the two countries.
After entering the data into your spread sheet program,you calculate the predicted exchange rate per U.S.dollar by dividing the price of a Big Mac in local currency by the U.S.price of a Big Mac ($2.51).To test for PPP,you regress the actual exchange rate on the predicted exchange rate.
The estimated regression is as follows: (Continuation of the Purchasing Power Parity question from Chapter 4)The news-magazine The Economist regularly publishes data on the so called Big Mac index and exchange rates between countries.The data for 30 countries from the April 29,2000 issue is listed below: Price of Actual Exchange Rate Country Currency Big Mac per U.S.dollar Indonesia Rupiah 14,500 7,945 Italy Lira 4,500 2,088 South Korea Won 3,000 1,108 Chile Peso 1,260 514 Spain Peseta 375 179 Hungary Forint 339 279 Japan Yen 294 106 Taiwan Dollar 70 30.6 Thailand Baht 55 38.0 Czech Rep.Crown 54.37 39.1 Russia Ruble 39.50 28.5 Denmark Crown 24.75 8.04 Sweden Crown 24.0 8.84 Mexico Peso 20.9 9.41 France Franc 18.5 7.07 Israel Shekel 14.5 4.05 China Yuan 9.90 8.28 South Africa Rand 9.0 6.72 Switzerland Franc 5.90 1.70 Poland Zloty 5.50 4.30 Germany Mark 4.99 2.11 Malaysia Dollar 4.52 3.80 New Zealand Dollar 3.40 2.01 Singapore Dollar 3.20 1.70 Brazil Real 2.95 1.79 Canada Dollar 2.85 1.47 Australia Dollar 2.59 1.68 Argentina Peso 2.50 1.00 Britain Pound 1.90 0.63 United States Dollar 2.51 The concept of purchasing power parity or PPP (the idea that similar foreign and domestic goods … should have the same price in terms of the same currency, Abel,A.and B.Bernanke,Macroeconomics,4th edition,Boston: Addison Wesley,476)suggests that the ratio of the Big Mac priced in the local currency to the U.S.dollar price should equal the exchange rate between the two countries. After entering the data into your spread sheet program,you calculate the predicted exchange rate per U.S.dollar by dividing the price of a Big Mac in local currency by the U.S.price of a Big Mac ($2.51).To test for PPP,you regress the actual exchange rate on the predicted exchange rate. The estimated regression is as follows:   = -27.05 + 1.35 × 1.35×Pr edExRate R2 = 0.994,n = 29,SER = 122.15 (23.74)(0.02) (a)Your spreadsheet program does not allow you to calculate heteroskedasticity robust standard errors.Instead,the numbers in parenthesis are homoskedasticity only standard errors.State the two null hypothesis under which PPP holds.Should you use a one-tailed or two-tailed alternative hypothesis? (b)Calculate the two t-statistics. (c)Using a 5% significance level,what is your decision regarding the null hypothesis given the two t-statistics? What critical values did you use? Are you concerned with the fact that you are testing the two hypothesis sequentially when they are supposed to hold simultaneously? (d)What assumptions had to be made for you to use Student's t-distribution?<div style=padding-top: 35px> = -27.05 + 1.35 × 1.35×Pr edExRate R2 = 0.994,n = 29,SER = 122.15
(23.74)(0.02)
(a)Your spreadsheet program does not allow you to calculate heteroskedasticity robust standard errors.Instead,the numbers in parenthesis are homoskedasticity only standard errors.State the two null hypothesis under which PPP holds.Should you use a one-tailed or two-tailed alternative hypothesis?
(b)Calculate the two t-statistics.
(c)Using a 5% significance level,what is your decision regarding the null hypothesis given the two t-statistics? What critical values did you use? Are you concerned with the fact that you are testing the two hypothesis sequentially when they are supposed to hold simultaneously?
(d)What assumptions had to be made for you to use Student's t-distribution?
سؤال
(Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level.
(a)The results of the regression for 104 countries were as follows: (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory?<div style=padding-top: 35px> = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016
(0.004)(0.0073) (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory?<div style=padding-top: 35px> where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors.
Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows: (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory?<div style=padding-top: 35px> = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016
(0.002)(0.0068)
Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain.
(b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors): (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory?<div style=padding-top: 35px> = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046
(0.004)(0.0063)
Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case.
(c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory?
سؤال
(continuation from Chapter 4,number 3)You have obtained a sub-sample of 1744 individuals from the Current Population Survey (CPS)and are interested in the relationship between weekly earnings and age.The regression,using heteroskedasticity-robust standard errors,yielded the following result: (continuation from Chapter 4,number 3)You have obtained a sub-sample of 1744 individuals from the Current Population Survey (CPS)and are interested in the relationship between weekly earnings and age.The regression,using heteroskedasticity-robust standard errors,yielded the following result:   = 239.16 + 5.20×Age ,R2 = 0.05,SER = 287.21. , (20.24)(0.57) where Earn and Age are measured in dollars and years respectively. (a)Is the relationship between Age and Earn statistically significant? (b)The variance of the error term and the variance of the dependent variable are related.Given the distribution of earnings,do you think it is plausible that the distribution of errors is normal? (c)Construct a 95% confidence interval for both the slope and the intercept.<div style=padding-top: 35px> = 239.16 + 5.20×Age ,R2 = 0.05,SER = 287.21. ,
(20.24)(0.57)
where Earn and Age are measured in dollars and years respectively.
(a)Is the relationship between Age and Earn statistically significant?
(b)The variance of the error term and the variance of the dependent variable are related.Given the distribution of earnings,do you think it is plausible that the distribution of errors is normal?
(c)Construct a 95% confidence interval for both the slope and the intercept.
سؤال
You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year ( <strong>You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year (   )and the growth rate of the respective state real GDP (gy).The results are as follows   = 2.81 - 0.23   gy,R2= 0.36,SER = 0.78 (0.12)(0.04) Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval</strong> A)[2.57,3.05] B)[-0.31,0.15] C)[-0.31,-0.15] D)[-0.33,-0.13] <div style=padding-top: 35px> )and the growth rate of the respective state real GDP (gy).The results are as follows <strong>You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year (   )and the growth rate of the respective state real GDP (gy).The results are as follows   = 2.81 - 0.23   gy,R2= 0.36,SER = 0.78 (0.12)(0.04) Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval</strong> A)[2.57,3.05] B)[-0.31,0.15] C)[-0.31,-0.15] D)[-0.33,-0.13] <div style=padding-top: 35px> = 2.81 - 0.23 <strong>You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year (   )and the growth rate of the respective state real GDP (gy).The results are as follows   = 2.81 - 0.23   gy,R2= 0.36,SER = 0.78 (0.12)(0.04) Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval</strong> A)[2.57,3.05] B)[-0.31,0.15] C)[-0.31,-0.15] D)[-0.33,-0.13] <div style=padding-top: 35px> gy,R2= 0.36,SER = 0.78 (0.12)(0.04)
Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval

A)[2.57,3.05]
B)[-0.31,0.15]
C)[-0.31,-0.15]
D)[-0.33,-0.13]
سؤال
Using 143 observations,assume that you had estimated a simple regression function and that your estimate for the slope was 0.04,with a standard error of 0.01.You want to test whether or not the estimate is statistically significant.Which of the following possible decisions is the only correct one:

A)you decide that the coefficient is small and hence most likely is zero in the population
B)the slope is statistically significant since it is four standard errors away from zero
C)the response of Y given a change in X must be economically important since it is statistically significant
D)since the slope is very small,so must be the regression R2.
سؤال
(Requires Appendix)(Continuation from Chapter 4)At a recent county fair,you observed that at one stand people's weight was forecasted,and were surprised by the accuracy (within a range).Thinking about how the person could have predicted your weight fairly accurately (despite the fact that she did not know about your "heavy bones"),you think about how this could have been accomplished.You remember that medical charts for children contain 5%,25%,50%,75% and 95% lines for a weight/height relationship and decide to conduct an experiment with 110 of your peers.You collect the data and calculate the following sums: (Requires Appendix)(Continuation from Chapter 4)At a recent county fair,you observed that at one stand people's weight was forecasted,and were surprised by the accuracy (within a range).Thinking about how the person could have predicted your weight fairly accurately (despite the fact that she did not know about your heavy bones),you think about how this could have been accomplished.You remember that medical charts for children contain 5%,25%,50%,75% and 95% lines for a weight/height relationship and decide to conduct an experiment with 110 of your peers.You collect the data and calculate the following sums:   where the height is measured in inches and weight in pounds.(Small letters refer to deviations from means as in zi = Zi -   . ) (a)Calculate the homoskedasticity-only standard errors and,using the resulting t-statistic,perform a test on the null hypothesis that there is no relationship between height and weight in the population of college students. (b)What is the alternative hypothesis in the above test,and what level of significance did you choose? (c)Statistics and econometrics textbooks often ask you to calculate critical values based on some level of significance,say 1%,5%,or 10%.What sort of criteria do you think should play a role in determining which level of significance to choose? (d)What do you think the relationship is between testing for the significance of the slope and whether or not the regression R2 is zero?<div style=padding-top: 35px> where the height is measured in inches and weight in pounds.(Small letters refer to deviations from means as in zi = Zi - (Requires Appendix)(Continuation from Chapter 4)At a recent county fair,you observed that at one stand people's weight was forecasted,and were surprised by the accuracy (within a range).Thinking about how the person could have predicted your weight fairly accurately (despite the fact that she did not know about your heavy bones),you think about how this could have been accomplished.You remember that medical charts for children contain 5%,25%,50%,75% and 95% lines for a weight/height relationship and decide to conduct an experiment with 110 of your peers.You collect the data and calculate the following sums:   where the height is measured in inches and weight in pounds.(Small letters refer to deviations from means as in zi = Zi -   . ) (a)Calculate the homoskedasticity-only standard errors and,using the resulting t-statistic,perform a test on the null hypothesis that there is no relationship between height and weight in the population of college students. (b)What is the alternative hypothesis in the above test,and what level of significance did you choose? (c)Statistics and econometrics textbooks often ask you to calculate critical values based on some level of significance,say 1%,5%,or 10%.What sort of criteria do you think should play a role in determining which level of significance to choose? (d)What do you think the relationship is between testing for the significance of the slope and whether or not the regression R2 is zero?<div style=padding-top: 35px> . )
(a)Calculate the homoskedasticity-only standard errors and,using the resulting t-statistic,perform a test on the null hypothesis that there is no relationship between height and weight in the population of college students.
(b)What is the alternative hypothesis in the above test,and what level of significance did you choose?
(c)Statistics and econometrics textbooks often ask you to calculate critical values based on some level of significance,say 1%,5%,or 10%.What sort of criteria do you think should play a role in determining which level of significance to choose?
(d)What do you think the relationship is between testing for the significance of the slope and whether or not the regression R2 is zero?
سؤال
You have collected 14,925 observations from the Current Population Survey.There are 6,285 females in the sample,and 8,640 males.The females report a mean of average hourly earnings of $16.50 with a standard deviation of $9.06.The males have an average of $20.09 and a standard deviation of $10.85.The overall mean average hourly earnings is $18.58.
a.Using the t-statistic for testing differences between two means (section 3.4 of your textbook),decide whether or not there is sufficient evidence to reject the null hypothesis that females and males have identical average hourly earnings.
b.You decide to run two regressions: first,you simply regress average hourly earnings on an intercept only.Next,you repeat this regression,but only for the 6,285 females in the sample.What will the regression coefficients be in each of the two regressions?
c.Finally you run a regression over the entire sample of average hourly earnings on an intercept and a binary variable DFemme,where this variable takes on a value of 1 if the individual is a female,and is 0 otherwise.What will be the value of the intercept? What will be the value of the coefficient of the binary variable?
d.What is the standard error on the slope coefficient? What is the t-statistic?
e.Had you used the homoskedasticity-only standard error in (d)and calculated the t-statistic,how would you have had to change the test-statistic in (a)to get the identical result?
سؤال
(Continuation from Chapter 4,number 5)You have learned in one of your economics courses that one of the determinants of per capita income (the "Wealth of Nations")is the population growth rate.Furthermore you also found out that the Penn World Tables contain income and population data for 104 countries of the world.To test this theory,you regress the GDP per worker (relative to the United States)in 1990 (RelPersInc)on the difference between the average population growth rate of that country (n)to the U.S.average population growth rate (nus )for the years 1980 to 1990.This results in the following regression output: (Continuation from Chapter 4,number 5)You have learned in one of your economics courses that one of the determinants of per capita income (the Wealth of Nations)is the population growth rate.Furthermore you also found out that the Penn World Tables contain income and population data for 104 countries of the world.To test this theory,you regress the GDP per worker (relative to the United States)in 1990 (RelPersInc)on the difference between the average population growth rate of that country (n)to the U.S.average population growth rate (nus )for the years 1980 to 1990.This results in the following regression output:   = 0.518 - 18.831×(n - nus),R2=0.522,SER = 0.197 (0.056)(3.177) (a)Is there any reason to believe that the variance of the error terms is homoskedastic? (b)Is the relationship statistically significant?<div style=padding-top: 35px> = 0.518 - 18.831×(n - nus),R2=0.522,SER = 0.197
(0.056)(3.177)
(a)Is there any reason to believe that the variance of the error terms is homoskedastic?
(b)Is the relationship statistically significant?
سؤال
(Continuation from Chapter 4)Sir Francis Galton,a cousin of James Darwin,examined the relationship between the height of children and their parents towards the end of the 19th century.It is from this study that the name "regression" originated.You decide to update his findings by collecting data from 110 college students,and estimate the following relationship: (Continuation from Chapter 4)Sir Francis Galton,a cousin of James Darwin,examined the relationship between the height of children and their parents towards the end of the 19th century.It is from this study that the name regression originated.You decide to update his findings by collecting data from 110 college students,and estimate the following relationship:   = 19.6 + 0.73 × Midparh,R2 = 0.45,SER = 2.0 (7.2)(0.10) where Studenth is the height of students in inches,and Midparh is the average of the parental heights.Values in parentheses are heteroskedasticity robust standard errors.(Following Galton's methodology,both variables were adjusted so that the average female height was equal to the average male height. ) (a)Test for the statistical significance of the slope coefficient. (b)If children,on average,were expected to be of the same height as their parents,then this would imply two hypotheses,one for the slope and one for the intercept. (i)What should the null hypothesis be for the intercept? Calculate the relevant t-statistic and carry out the hypothesis test at the 1% level. (ii)What should the null hypothesis be for the slope? Calculate the relevant t-statistic and carry out the hypothesis test at the 5% level. (c)Can you reject the null hypothesis that the regression R2 is zero? (d)Construct a 95% confidence interval for a one inch increase in the average of parental height.<div style=padding-top: 35px> = 19.6 + 0.73 × Midparh,R2 = 0.45,SER = 2.0
(7.2)(0.10)
where Studenth is the height of students in inches,and Midparh is the average of the parental heights.Values in parentheses are heteroskedasticity robust standard errors.(Following Galton's methodology,both variables were adjusted so that the average female height was equal to the average male height. )
(a)Test for the statistical significance of the slope coefficient.
(b)If children,on average,were expected to be of the same height as their parents,then this would imply two hypotheses,one for the slope and one for the intercept.
(i)What should the null hypothesis be for the intercept? Calculate the relevant t-statistic and carry out the hypothesis test at the 1% level.
(ii)What should the null hypothesis be for the slope? Calculate the relevant t-statistic and carry out the hypothesis test at the 5% level.
(c)Can you reject the null hypothesis that the regression R2 is zero?
(d)Construct a 95% confidence interval for a one inch increase in the average of parental height.
سؤال
If the errors are heteroskedastic,then

A)OLS is BLUE.
B)WLS is BLUE if the conditional variance of the errors is known up to a constant factor of proportionality.
C)LAD is BLUE if the conditional variance of the errors is known up to a constant factor of proportionality.
D)OLS is efficient.
سؤال
The homoskedastic normal regression assumptions are all of the following with the exception of:

A)the errors are homoskedastic.
B)the errors are normally distributed.
C)there are no outliers.
D)there are at least 10 observations.
سؤال
In order to formulate whether or not the alternative hypothesis is one-sided or two-sided,you need some guidance from economic theory.Choose at least three examples from economics or other fields where you have a clear idea what the null hypothesis and the alternative hypothesis for the slope coefficient should be.Write a brief justification for your answer.
سؤال
Carefully discuss the advantages of using heteroskedasticity-robust standard errors over standard errors calculated under the assumption of homoskedasticity.Give at least five examples where it is very plausible to assume that the errors display heteroskedasticity.
سؤال
(Requires Appendix material from Chapters 4 and 5)Shortly before you are making a group presentation on the testscore/student-teacher ratio results,you realize that one of your peers forgot to type all the relevant information on one of your slides.Here is what you see: (Requires Appendix material from Chapters 4 and 5)Shortly before you are making a group presentation on the testscore/student-teacher ratio results,you realize that one of your peers forgot to type all the relevant information on one of your slides.Here is what you see:   = 698.9 - STR,R2 = 0.051,SER = 18.6 (9.47)(0.48) In addition,your group member explains that he ran the regression in a standard spreadsheet program,and that,as a result,the standard errors in parenthesis are homoskedasticity-only standard errors. (a)Find the value for the slope coefficient. (b)Calculate the t-statistic for the slope and the intercept.Test the hypothesis that the intercept and the slope are different from zero. (c)Should you be concerned that your group member only gave you the result for the homoskedasticity-only standard error formula,instead of using the heteroskedasticity-robust standard errors?<div style=padding-top: 35px> = 698.9 - STR,R2 = 0.051,SER = 18.6
(9.47)(0.48)
In addition,your group member explains that he ran the regression in a standard spreadsheet program,and that,as a result,the standard errors in parenthesis are homoskedasticity-only standard errors.
(a)Find the value for the slope coefficient.
(b)Calculate the t-statistic for the slope and the intercept.Test the hypothesis that the intercept and the slope are different from zero.
(c)Should you be concerned that your group member only gave you the result for the homoskedasticity-only standard error formula,instead of using the heteroskedasticity-robust standard errors?
سؤال
Consider the estimated equation from your textbook <strong>Consider the estimated equation from your textbook   =698.9 - 2.28   STR,R2 = 0.051,SER = 18.6 (10.4)(0.52) The t-statistic for the slope is approximately</strong> A)4.38 B)67.20 C)0.52 D)1.76 <div style=padding-top: 35px> =698.9 - 2.28 <strong>Consider the estimated equation from your textbook   =698.9 - 2.28   STR,R2 = 0.051,SER = 18.6 (10.4)(0.52) The t-statistic for the slope is approximately</strong> A)4.38 B)67.20 C)0.52 D)1.76 <div style=padding-top: 35px> STR,R2 = 0.051,SER = 18.6 (10.4)(0.52)
The t-statistic for the slope is approximately

A)4.38
B)67.20
C)0.52
D)1.76
سؤال
(Requires Appendix material)Your textbook shows that OLS is a linear estimator (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case.<div style=padding-top: 35px> 1 = (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case.<div style=padding-top: 35px> ,where (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case.<div style=padding-top: 35px> .For OLS to be conditionally unbiased,the following two conditions must hold: (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case.<div style=padding-top: 35px> and (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case.<div style=padding-top: 35px> = 1.Show that this is the case.
سؤال
Using the California School data set from your textbook,you run the following regression: Using the California School data set from your textbook,you run the following regression:   = 698.9 - 2.28 STR n = 420,SER = 9.4 where TestScore is the average test score in the district and STR is the student-teacher ratio.The sample standard deviation of test scores is 19.05,and the sample standard deviation of the student teacher ratio is 1.89. a. Find the regression R2 and the correlation coefficient between test scores and the student teacher ratio. b. Find the homoskedasticity-only standard error of the slope.<div style=padding-top: 35px> = 698.9 - 2.28 STR
n = 420,SER = 9.4
where TestScore is the average test score in the district and STR is the student-teacher ratio.The sample standard deviation of test scores is 19.05,and the sample standard deviation of the student teacher ratio is 1.89.
a.
Find the regression R2 and the correlation coefficient between test scores and the student teacher ratio.
b.
Find the homoskedasticity-only standard error of the slope.
سؤال
Consider the sample regression function Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  <div style=padding-top: 35px> i = Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  <div style=padding-top: 35px> + Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  <div style=padding-top: 35px> Xi.The table below lists estimates for the slope ( Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  <div style=padding-top: 35px> )and the variance of the slope estimator ( Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  <div style=padding-top: 35px> ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.
Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  <div style=padding-top: 35px>
سؤال
In a Monte Carlo study,econometricians generate multiple sample regression functions from a known population regression function.For example,the population regression function could be Yi = β0 + β1Xi = 100 - 0.5 Xi.The Xs could be generated randomly or,for simplicity,be nonrandom ("fixed over repeated samples").If we had ten of these Xs,say,and generated twenty Ys,we would obviously always have all observations on a straight line,and the least squares formulae would always return values of 100 and 0.5 numerically.However,if we added an error term,where the errors would be drawn randomly from a normal distribution,say,then the OLS formulae would give us estimates that differed from the population regression function values.Assume you did just that and recorded the values for the slope and the intercept.Then you did the same experiment again (each one of these is called a "replication").And so forth.After 1,000 replications,you plot the 1,000 intercepts and slopes,and list their summary statistics.
Sample: 1 1000
BETA0_HAT BETA1_HAT
Mean 100.014 -0.500
Median 100.021 -0.500
Maximum 106.348 -0.468
Minimum 93.862 -0.538
Std.Dev.1.994 0.011
Skewness 0.013 -0.042
Kurtosis 3.026 2.986
Jarque-Bera 0.055 0.305
Probability 0.973 0.858
Sum 100014.353 -499.857
Sum Sq.Dev.3972.403 0.118
Observations 1000.000 1000.000
Here are the corresponding graphs: In a Monte Carlo study,econometricians generate multiple sample regression functions from a known population regression function.For example,the population regression function could be Yi = β0 + β1Xi = 100 - 0.5 Xi.The Xs could be generated randomly or,for simplicity,be nonrandom (fixed over repeated samples).If we had ten of these Xs,say,and generated twenty Ys,we would obviously always have all observations on a straight line,and the least squares formulae would always return values of 100 and 0.5 numerically.However,if we added an error term,where the errors would be drawn randomly from a normal distribution,say,then the OLS formulae would give us estimates that differed from the population regression function values.Assume you did just that and recorded the values for the slope and the intercept.Then you did the same experiment again (each one of these is called a replication).And so forth.After 1,000 replications,you plot the 1,000 intercepts and slopes,and list their summary statistics. Sample: 1 1000 BETA0_HAT BETA1_HAT Mean 100.014 -0.500 Median 100.021 -0.500 Maximum 106.348 -0.468 Minimum 93.862 -0.538 Std.Dev.1.994 0.011 Skewness 0.013 -0.042 Kurtosis 3.026 2.986 Jarque-Bera 0.055 0.305 Probability 0.973 0.858 Sum 100014.353 -499.857 Sum Sq.Dev.3972.403 0.118 Observations 1000.000 1000.000 Here are the corresponding graphs:     Using the means listed next to the graphs,you see that the averages are not exactly 100 and -0.5.However,they are close. Test for the difference of these averages from the population values to be statistically significant.<div style=padding-top: 35px> In a Monte Carlo study,econometricians generate multiple sample regression functions from a known population regression function.For example,the population regression function could be Yi = β0 + β1Xi = 100 - 0.5 Xi.The Xs could be generated randomly or,for simplicity,be nonrandom (fixed over repeated samples).If we had ten of these Xs,say,and generated twenty Ys,we would obviously always have all observations on a straight line,and the least squares formulae would always return values of 100 and 0.5 numerically.However,if we added an error term,where the errors would be drawn randomly from a normal distribution,say,then the OLS formulae would give us estimates that differed from the population regression function values.Assume you did just that and recorded the values for the slope and the intercept.Then you did the same experiment again (each one of these is called a replication).And so forth.After 1,000 replications,you plot the 1,000 intercepts and slopes,and list their summary statistics. Sample: 1 1000 BETA0_HAT BETA1_HAT Mean 100.014 -0.500 Median 100.021 -0.500 Maximum 106.348 -0.468 Minimum 93.862 -0.538 Std.Dev.1.994 0.011 Skewness 0.013 -0.042 Kurtosis 3.026 2.986 Jarque-Bera 0.055 0.305 Probability 0.973 0.858 Sum 100014.353 -499.857 Sum Sq.Dev.3972.403 0.118 Observations 1000.000 1000.000 Here are the corresponding graphs:     Using the means listed next to the graphs,you see that the averages are not exactly 100 and -0.5.However,they are close. Test for the difference of these averages from the population values to be statistically significant.<div style=padding-top: 35px> Using the means listed next to the graphs,you see that the averages are not exactly 100 and -0.5.However,they are "close." Test for the difference of these averages from the population values to be statistically significant.
سؤال
In many of the cases discussed in your textbook,you test for the significance of the slope at the 5% level.What is the size of the test? What is the power of the test? Why is the probability of committing a Type II error so large here?
سؤال
Changing the units of measurement obviously will have an effect on the slope of your regression function.For example,let Y*= aY and X* = bX.Then it is easy but tedious to show that Changing the units of measurement obviously will have an effect on the slope of your regression function.For example,let Y*= aY and X* = bX.Then it is easy but tedious to show that   .Given this result,how do you think the standard errors and the regression R2 will change?<div style=padding-top: 35px> .Given this result,how do you think the standard errors and the regression R2 will change?
سؤال
The effect of decreasing the student-teacher ratio by one is estimated to result in an improvement of the districtwide score by 2.28 with a standard error of 0.52.Construct a 90% and 99% confidence interval for the size of the slope coefficient and the corresponding predicted effect of changing the student-teacher ratio by one.What is the intuition on why the 99% confidence interval is wider than the 90% confidence interval?
سؤال
Using data from the Current Population Survey,you estimate the following relationship between average hourly earnings (ahe)and the number of years of education (educ): Using data from the Current Population Survey,you estimate the following relationship between average hourly earnings (ahe)and the number of years of education (educ):   = -4.58 + 1.71 educ The heteroskedasticity-robust standard error on the slope is (0.03).Calculate the 95% confidence interval for the slope.Repeat the exercise using the 90% and then the 99% confidence interval.Can you reject the null hypothesis that the slope coefficient is zero in the population?<div style=padding-top: 35px> = -4.58 + 1.71 educ
The heteroskedasticity-robust standard error on the slope is (0.03).Calculate the 95% confidence interval for the slope.Repeat the exercise using the 90% and then the 99% confidence interval.Can you reject the null hypothesis that the slope coefficient is zero in the population?
سؤال
Consider the following two models involving binary variables as explanatory variables: Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?<div style=padding-top: 35px> = Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?<div style=padding-top: 35px> + Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?<div style=padding-top: 35px> DFemme and Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?<div style=padding-top: 35px> = Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?<div style=padding-top: 35px> DFemme + Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?<div style=padding-top: 35px> Male
where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients.
What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?
سؤال
(Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> 1 to be var( (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> 1 (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> X1,... ,Xn)= (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> where the conditions for conditional unbiasedness are (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> = 0 and (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )<div style=padding-top: 35px> .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )
سؤال
Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision.
(a) Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> = Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> 0 + Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> 1pi,where qd is the quantity demanded for a good,and p is its price.
(b) Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> = Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> 0 + Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> 1 Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> ,where Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> is the actual house price,and Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> is the assessed house price.You want to test whether or not the assessment is correct,on average.
(c) Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> i = Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> 0 + Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> 1 Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income.<div style=padding-top: 35px> ,where C is household consumption,and Yd is personal disposable income.
سؤال
Your textbook states that under certain restrictive conditions,the t- statistic has a Student t-distribution with n-2 degrees of freedom.The loss of two degrees of freedom is the result of OLS forcing two restrictions onto the data.What are these two conditions,and when did you impose them onto the data set in your derivation of the OLS estimator?
سؤال
Let Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> be distributed N(0, Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> being distributed N(β1, Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> ),where Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> .Statistical inference would be straightforward if Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> was known.One way to deal with this problem is to replace Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> with an estimator Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> .Clearly since this introduces more uncertainty,you cannot expect Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase.<div style=padding-top: 35px> can be incorporated about the tails of the t-distribution as the degrees of freedom increase.
سؤال
Assume that the homoskedastic normal regression assumption hold.Using the Student t-distribution,find the critical value for the following situation:
(a)n = 28,5% significance level,one-sided test.
(b)n = 40,1% significance level,two-sided test.
(c)n = 10,10% significance level,one-sided test.
(d)n = ∞,5% significance level,two-sided test.
سؤال
Using the California School data set from your textbook,you run the following regression: Using the California School data set from your textbook,you run the following regression:   = 698.9 - 2.28 STR n = 420,R2 = 0.051,SER = 18.6 where TestScore is the average test score in the district and STR is the student-teacher ratio.Using heteroskedasticity robust standard errors,you find   while choosing the homoskedasticity-only option,the standard error is 0.48. a.Calculate the t-statistic for both standard errors. b.Which of the two t-statistics should you base your inference on?<div style=padding-top: 35px> = 698.9 - 2.28 STR
n = 420,R2 = 0.051,SER = 18.6
where TestScore is the average test score in the district and STR is the student-teacher ratio.Using heteroskedasticity robust standard errors,you find Using the California School data set from your textbook,you run the following regression:   = 698.9 - 2.28 STR n = 420,R2 = 0.051,SER = 18.6 where TestScore is the average test score in the district and STR is the student-teacher ratio.Using heteroskedasticity robust standard errors,you find   while choosing the homoskedasticity-only option,the standard error is 0.48. a.Calculate the t-statistic for both standard errors. b.Which of the two t-statistics should you base your inference on?<div style=padding-top: 35px> while choosing the homoskedasticity-only option,the standard error is 0.48.
a.Calculate the t-statistic for both standard errors.
b.Which of the two t-statistics should you base your inference on?
سؤال
The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?<div style=padding-top: 35px> = The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?<div style=padding-top: 35px> + The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?<div style=padding-top: 35px> × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying ("beta")convergence.Using a standard regression package,you get the following output:
Dependent Variable: G6090
Method: Least Squares
Date: 07/11/06 Time: 05:46
Sample: 1 104
Included observations: 104
White Heteroskedasticity-Consistent Standard Errors & Covariance The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?<div style=padding-top: 35px> The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?<div style=padding-top: 35px> You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?
سؤال
Your textbook discussed the regression model when X is a binary variable
Yi = β0 + βiDi + ui,i = 1,... ,n
Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the intercept coefficient,prove that Your textbook discussed the regression model when X is a binary variable Yi = β0 + βiDi + ui,i = 1,... ,n Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the intercept coefficient,prove that   is the average wage for males.<div style=padding-top: 35px> is the average wage for males.
سؤال
Your textbook discussed the regression model when X is a binary variable
Yi = β0 + β1Di + ui,i = 1... ,n
Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the slope coefficient,prove that Your textbook discussed the regression model when X is a binary variable Yi = β0 + β1Di + ui,i = 1... ,n Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the slope coefficient,prove that   is the difference between the average wage for males and the average wage for females.<div style=padding-top: 35px> is the difference between the average wage for males and the average wage for females.
سؤال
Assume that your population regression function is
Yi = βiXi + ui
i.e. ,a regression through the origin (no intercept).Under the homoskedastic normal regression assumptions,the t-statistic will have a Student t distribution with n-1 degrees of freedom,not n-2 degrees of freedom,as was the case in Chapter 5 of your textbook.Explain.Do you think that the residuals will still sum to zero for this case?
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Deck 5: Regression With a Single Regressor: Hypothesis Tests and Confidence Intervals
1
In general,the t-statistic has the following form:

A) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)
B) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)
C) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)
D) <strong>In general,the t-statistic has the following form:</strong> A)   B)   C)   D)
C
2
Consider the following regression line: <strong>Consider the following regression line:   = 698.9 - 2.28 × STR.You are told that the t-statistic on the slope coefficient is 4.38.What is the standard error of the slope coefficient?</strong> A)0.52 B)1.96 C)-1.96 D)4.38 = 698.9 - 2.28 × STR.You are told that the t-statistic on the slope coefficient is 4.38.What is the standard error of the slope coefficient?

A)0.52
B)1.96
C)-1.96
D)4.38
A
3
The error term is homoskedastic if

A)var(ui <strong>The error term is homoskedastic if</strong> A)var(ui   is constant for i = 1,…,n. B)var(ui   depends on x. C)Xi is normally distributed. D)there are no outliers. is constant for i = 1,…,n.
B)var(ui <strong>The error term is homoskedastic if</strong> A)var(ui   is constant for i = 1,…,n. B)var(ui   depends on x. C)Xi is normally distributed. D)there are no outliers. depends on x.
C)Xi is normally distributed.
D)there are no outliers.
A
4
The homoskedasticity-only estimator of the variance of <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)   1 is

A) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)
B) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)
C) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)
D) <strong>The homoskedasticity-only estimator of the variance of   1 is</strong> A)   B)   C)   D)
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5
The t-statistic is calculated by dividing

A)the OLS estimator by its standard error.
B)the slope by the standard deviation of the explanatory variable.
C)the estimator minus its hypothesized value by the standard error of the estimator.
D)the slope by 1.96.
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6
Under the least squares assumptions (zero conditional mean for the error term,Xi and Yi being i.i.d. ,and Xi and ui having finite fourth moments),the OLS estimator for the slope and intercept

A)has an exact normal distribution for n > 15.
B)is BLUE.
C)has a normal distribution even in small samples.
D)is unbiased.
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7
When estimating a demand function for a good where quantity demanded is a linear function of the price,you should

A)not include an intercept because the price of the good is never zero.
B)use a one-sided alternative hypothesis to check the influence of price on quantity.
C)use a two-sided alternative hypothesis to check the influence of price on quantity.
D)reject the idea that price determines demand unless the coefficient is at least 1.96.
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8
The confidence interval for the sample regression function slope

A)can be used to conduct a test about a hypothesized population regression function slope.
B)can be used to compare the value of the slope relative to that of the intercept.
C)adds and subtracts 1.96 from the slope.
D)allows you to make statements about the economic importance of your estimate.
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9
The only difference between a one- and two-sided hypothesis test is

A)the null hypothesis.
B)dependent on the sample size n.
C)the sign of the slope coefficient.
D)how you interpret the t-statistic.
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10
Heteroskedasticity means that

A)homogeneity cannot be assumed automatically for the model.
B)the variance of the error term is not constant.
C)the observed units have different preferences.
D)agents are not all rational.
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11
One of the following steps is not required as a step to test for the null hypothesis:

A)compute the standard error of <strong>One of the following steps is not required as a step to test for the null hypothesis:</strong> A)compute the standard error of   1. B)test for the errors to be normally distributed. C)compute the t-statistic. D)compute the p-value. 1.
B)test for the errors to be normally distributed.
C)compute the t-statistic.
D)compute the p-value.
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12
If the absolute value of your calculated t-statistic exceeds the critical value from the standard normal distribution,you can

A)reject the null hypothesis.
B)safely assume that your regression results are significant.
C)reject the assumption that the error terms are homoskedastic.
D)conclude that most of the actual values are very close to the regression line.
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13
Imagine that you were told that the t-statistic for the slope coefficient of the regression line <strong>Imagine that you were told that the t-statistic for the slope coefficient of the regression line   = 698.9 - 2.28 × STR was 4.38.What are the units of measurement for the t-statistic?</strong> A)points of the test score B)number of students per teacher C)   D)standard deviations = 698.9 - 2.28 × STR was 4.38.What are the units of measurement for the t-statistic?

A)points of the test score
B)number of students per teacher
C) <strong>Imagine that you were told that the t-statistic for the slope coefficient of the regression line   = 698.9 - 2.28 × STR was 4.38.What are the units of measurement for the t-statistic?</strong> A)points of the test score B)number of students per teacher C)   D)standard deviations
D)standard deviations
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14
A binary variable is often called a

A)dummy variable.
B)dependent variable.
C)residual.
D)power of a test.
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15
Finding a small value of the p-value (e.g.less than 5%)

A)indicates evidence in favor of the null hypothesis.
B)implies that the t-statistic is less than 1.96.
C)indicates evidence in against the null hypothesis.
D)will only happen roughly one in twenty samples.
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16
In the presence of heteroskedasticity,and assuming that the usual least squares assumptions hold,the OLS estimator is

A)efficient.
B)BLUE.
C)unbiased and consistent.
D)unbiased but not consistent.
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17
The p-value for a one-sided left-tail test is given by

A)Pr(Z - tact )= φ(tact).
B)Pr(Z < tact )= φ(tact).
C)Pr(Z < tact )< 1.645.
D)cannot be calculated,since probabilities must always be positive.
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18
The construction of the t-statistic for a one- and a two-sided hypothesis

A)depends on the critical value from the appropriate distribution.
B)is the same.
C)is different since the critical value must be 1.645 for the one-sided hypothesis,but 1.96 for the two-sided hypothesis (using a 5% probability for the Type I error).
D)uses ±1.96 for the two-sided test,but only +1.96 for the one-sided test.
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19
The proof that OLS is BLUE requires all of the following assumptions with the exception of:

A)the errors are homoskedastic.
B)the errors are normally distributed.
C)E(ui <strong>The proof that OLS is BLUE requires all of the following assumptions with the exception of:</strong> A)the errors are homoskedastic. B)the errors are normally distributed. C)E(ui   . D)large outliers are unlikely. .
D)large outliers are unlikely.
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20
With heteroskedastic errors,the weighted least squares estimator is BLUE.You should use OLS with heteroskedasticity-robust standard errors because

A)this method is simpler.
B)the exact form of the conditional variance is rarely known.
C)the Gauss-Markov theorem holds.
D)your spreadsheet program does not have a command for weighted least squares.
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21
You extract approximately 5,000 observations from the Current Population Survey (CPS)and estimate the following regression function: <strong>You extract approximately 5,000 observations from the Current Population Survey (CPS)and estimate the following regression function:   = 3.32 - 0.45   Age,R2= 0.02,SER = 8.66 (1.00)(0.04) Where ahe is average hourly earnings,and Age is the individual's age.Given the specification,your 95% confidence interval for the effect of changing age by 5 years is approximately</strong> A)[$1.96,$2.54] B)[$2.32,$4.32] C)[$1.35,$5.30] D)cannot be determined given the information provided = 3.32 - 0.45 <strong>You extract approximately 5,000 observations from the Current Population Survey (CPS)and estimate the following regression function:   = 3.32 - 0.45   Age,R2= 0.02,SER = 8.66 (1.00)(0.04) Where ahe is average hourly earnings,and Age is the individual's age.Given the specification,your 95% confidence interval for the effect of changing age by 5 years is approximately</strong> A)[$1.96,$2.54] B)[$2.32,$4.32] C)[$1.35,$5.30] D)cannot be determined given the information provided Age,R2= 0.02,SER = 8.66 (1.00)(0.04)
Where ahe is average hourly earnings,and Age is the individual's age.Given the specification,your 95% confidence interval for the effect of changing age by 5 years is approximately

A)[$1.96,$2.54]
B)[$2.32,$4.32]
C)[$1.35,$5.30]
D)cannot be determined given the information provided
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22
Using the textbook example of 420 California school districts and the regression of testscores on the student-teacher ratio,you find that the standard error on the slope coefficient is 0.51 when using the heteroskedasticity robust formula,while it is 0.48 when employing the homoskedasticity only formula.When calculating the t-statistic,the recommended procedure is to

A)use the homoskedasticity only formula because the t-statistic becomes larger
B)first test for homoskedasticity of the errors and then make a decision
C)use the heteroskedasticity robust formula
D)make a decision depending on how much different the estimate of the slope is under the two procedures
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23
You recall from one of your earlier lectures in macroeconomics that the per capita income depends on the savings rate of the country: those who save more end up with a higher standard of living.To test this theory,you collect data from the Penn World Tables on GDP per worker relative to the United States (RelProd)in 1990 and the average investment share of GDP from 1980-1990 (SK),remembering that investment equals saving.The regression results in the following output: You recall from one of your earlier lectures in macroeconomics that the per capita income depends on the savings rate of the country: those who save more end up with a higher standard of living.To test this theory,you collect data from the Penn World Tables on GDP per worker relative to the United States (RelProd)in 1990 and the average investment share of GDP from 1980-1990 (SK),remembering that investment equals saving.The regression results in the following output:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.38) (a)Interpret the regression results carefully. (b)Calculate the t-statistics to determine whether the two coefficients are significantly different from zero.Justify the use of a one-sided or two-sided test. (c)You accidentally forget to use the heteroskedasticity-robust standard errors option in your regression package and estimate the equation using homoskedasticity-only standard errors.This changes the results as follows:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.26) You are delighted to find that the coefficients have not changed at all and that your results have become even more significant.Why haven't the coefficients changed? Are the results really more significant? Explain. (d)Upon reflection you think about the advantages of OLS with and without homoskedasticity-only standard errors.What are these advantages? Is it likely that the error terms would be heteroskedastic in this situation? = -0.08 + 2.44×SK,R2=0.46,SER = 0.21
(0.04)(0.38)
(a)Interpret the regression results carefully.
(b)Calculate the t-statistics to determine whether the two coefficients are significantly different from zero.Justify the use of a one-sided or two-sided test.
(c)You accidentally forget to use the heteroskedasticity-robust standard errors option in your regression package and estimate the equation using homoskedasticity-only standard errors.This changes the results as follows: You recall from one of your earlier lectures in macroeconomics that the per capita income depends on the savings rate of the country: those who save more end up with a higher standard of living.To test this theory,you collect data from the Penn World Tables on GDP per worker relative to the United States (RelProd)in 1990 and the average investment share of GDP from 1980-1990 (SK),remembering that investment equals saving.The regression results in the following output:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.38) (a)Interpret the regression results carefully. (b)Calculate the t-statistics to determine whether the two coefficients are significantly different from zero.Justify the use of a one-sided or two-sided test. (c)You accidentally forget to use the heteroskedasticity-robust standard errors option in your regression package and estimate the equation using homoskedasticity-only standard errors.This changes the results as follows:   = -0.08 + 2.44×SK,R2=0.46,SER = 0.21 (0.04)(0.26) You are delighted to find that the coefficients have not changed at all and that your results have become even more significant.Why haven't the coefficients changed? Are the results really more significant? Explain. (d)Upon reflection you think about the advantages of OLS with and without homoskedasticity-only standard errors.What are these advantages? Is it likely that the error terms would be heteroskedastic in this situation? = -0.08 + 2.44×SK,R2=0.46,SER = 0.21
(0.04)(0.26)
You are delighted to find that the coefficients have not changed at all and that your results have become even more significant.Why haven't the coefficients changed? Are the results really more significant? Explain.
(d)Upon reflection you think about the advantages of OLS with and without homoskedasticity-only standard errors.What are these advantages? Is it likely that the error terms would be heteroskedastic in this situation?
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24
You have obtained measurements of height in inches of 29 female and 81 male students (Studenth)at your university.A regression of the height on a constant and a binary variable (BFemme),which takes a value of one for females and is zero otherwise,yields the following result: You have obtained measurements of height in inches of 29 female and 81 male students (Studenth)at your university.A regression of the height on a constant and a binary variable (BFemme),which takes a value of one for females and is zero otherwise,yields the following result:   = 71.0 - 4.84×BFemme ,R2 = 0.40,SER = 2.0 (0.3)(0.57) (a)What is the interpretation of the intercept? What is the interpretation of the slope? How tall are females,on average? (b)Test the hypothesis that females,on average,are shorter than males,at the 1% level. (c)Is it likely that the error term is homoskedastic here? = 71.0 - 4.84×BFemme ,R2 = 0.40,SER = 2.0
(0.3)(0.57)
(a)What is the interpretation of the intercept? What is the interpretation of the slope? How tall are females,on average?
(b)Test the hypothesis that females,on average,are shorter than males,at the 1% level.
(c)Is it likely that the error term is homoskedastic here?
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25
Explain carefully the relationship between a confidence interval,a one-sided hypothesis test,and a two-sided hypothesis test.What is the unit of measurement of the t-statistic?
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26
(Continuation of the Purchasing Power Parity question from Chapter 4)The news-magazine The Economist regularly publishes data on the so called Big Mac index and exchange rates between countries.The data for 30 countries from the April 29,2000 issue is listed below:
Price of Actual Exchange Rate
Country Currency Big Mac per U.S.dollar
Indonesia Rupiah 14,500 7,945
Italy Lira 4,500 2,088
South Korea Won 3,000 1,108
Chile Peso 1,260 514
Spain Peseta 375 179
Hungary Forint 339 279
Japan Yen 294 106
Taiwan Dollar 70 30.6
Thailand Baht 55 38.0
Czech Rep.Crown 54.37 39.1
Russia Ruble 39.50 28.5
Denmark Crown 24.75 8.04
Sweden Crown 24.0 8.84
Mexico Peso 20.9 9.41
France Franc 18.5 7.07
Israel Shekel 14.5 4.05
China Yuan 9.90 8.28
South Africa Rand 9.0 6.72
Switzerland Franc 5.90 1.70
Poland Zloty 5.50 4.30
Germany Mark 4.99 2.11
Malaysia Dollar 4.52 3.80
New Zealand Dollar 3.40 2.01
Singapore Dollar 3.20 1.70
Brazil Real 2.95 1.79
Canada Dollar 2.85 1.47
Australia Dollar 2.59 1.68
Argentina Peso 2.50 1.00
Britain Pound 1.90 0.63
United States Dollar 2.51
The concept of purchasing power parity or PPP ("the idea that similar foreign and domestic goods … should have the same price in terms of the same currency," Abel,A.and B.Bernanke,Macroeconomics,4th edition,Boston: Addison Wesley,476)suggests that the ratio of the Big Mac priced in the local currency to the U.S.dollar price should equal the exchange rate between the two countries.
After entering the data into your spread sheet program,you calculate the predicted exchange rate per U.S.dollar by dividing the price of a Big Mac in local currency by the U.S.price of a Big Mac ($2.51).To test for PPP,you regress the actual exchange rate on the predicted exchange rate.
The estimated regression is as follows: (Continuation of the Purchasing Power Parity question from Chapter 4)The news-magazine The Economist regularly publishes data on the so called Big Mac index and exchange rates between countries.The data for 30 countries from the April 29,2000 issue is listed below: Price of Actual Exchange Rate Country Currency Big Mac per U.S.dollar Indonesia Rupiah 14,500 7,945 Italy Lira 4,500 2,088 South Korea Won 3,000 1,108 Chile Peso 1,260 514 Spain Peseta 375 179 Hungary Forint 339 279 Japan Yen 294 106 Taiwan Dollar 70 30.6 Thailand Baht 55 38.0 Czech Rep.Crown 54.37 39.1 Russia Ruble 39.50 28.5 Denmark Crown 24.75 8.04 Sweden Crown 24.0 8.84 Mexico Peso 20.9 9.41 France Franc 18.5 7.07 Israel Shekel 14.5 4.05 China Yuan 9.90 8.28 South Africa Rand 9.0 6.72 Switzerland Franc 5.90 1.70 Poland Zloty 5.50 4.30 Germany Mark 4.99 2.11 Malaysia Dollar 4.52 3.80 New Zealand Dollar 3.40 2.01 Singapore Dollar 3.20 1.70 Brazil Real 2.95 1.79 Canada Dollar 2.85 1.47 Australia Dollar 2.59 1.68 Argentina Peso 2.50 1.00 Britain Pound 1.90 0.63 United States Dollar 2.51 The concept of purchasing power parity or PPP (the idea that similar foreign and domestic goods … should have the same price in terms of the same currency, Abel,A.and B.Bernanke,Macroeconomics,4th edition,Boston: Addison Wesley,476)suggests that the ratio of the Big Mac priced in the local currency to the U.S.dollar price should equal the exchange rate between the two countries. After entering the data into your spread sheet program,you calculate the predicted exchange rate per U.S.dollar by dividing the price of a Big Mac in local currency by the U.S.price of a Big Mac ($2.51).To test for PPP,you regress the actual exchange rate on the predicted exchange rate. The estimated regression is as follows:   = -27.05 + 1.35 × 1.35×Pr edExRate R2 = 0.994,n = 29,SER = 122.15 (23.74)(0.02) (a)Your spreadsheet program does not allow you to calculate heteroskedasticity robust standard errors.Instead,the numbers in parenthesis are homoskedasticity only standard errors.State the two null hypothesis under which PPP holds.Should you use a one-tailed or two-tailed alternative hypothesis? (b)Calculate the two t-statistics. (c)Using a 5% significance level,what is your decision regarding the null hypothesis given the two t-statistics? What critical values did you use? Are you concerned with the fact that you are testing the two hypothesis sequentially when they are supposed to hold simultaneously? (d)What assumptions had to be made for you to use Student's t-distribution? = -27.05 + 1.35 × 1.35×Pr edExRate R2 = 0.994,n = 29,SER = 122.15
(23.74)(0.02)
(a)Your spreadsheet program does not allow you to calculate heteroskedasticity robust standard errors.Instead,the numbers in parenthesis are homoskedasticity only standard errors.State the two null hypothesis under which PPP holds.Should you use a one-tailed or two-tailed alternative hypothesis?
(b)Calculate the two t-statistics.
(c)Using a 5% significance level,what is your decision regarding the null hypothesis given the two t-statistics? What critical values did you use? Are you concerned with the fact that you are testing the two hypothesis sequentially when they are supposed to hold simultaneously?
(d)What assumptions had to be made for you to use Student's t-distribution?
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(Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level.
(a)The results of the regression for 104 countries were as follows: (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory? = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016
(0.004)(0.0073) (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory? where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors.
Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows: (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory? = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016
(0.002)(0.0068)
Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain.
(b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors): (Continuation from Chapter 4,number 6)The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level. (a)The results of the regression for 104 countries were as follows:   = 0.019 - 0.0006 × RelProd60,R2= 0.00007,SER = 0.016 (0.004)(0.0073)   where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Numbers in parenthesis are heteroskedasticity robust standard errors. Using the OLS estimator with homoskedasticity-only standard errors,the results changed as follows:   = 0.019 - 0.0006×RelProd60,R2= 0.00007,SER = 0.016 (0.002)(0.0068) Why didn't the estimated coefficients change? Given that the standard error of the slope is now smaller,can you reject the null hypothesis of no beta convergence? Are the results in the second equation more reliable than the results in the first equation? Explain. (b)You decide to restrict yourself to the 24 OECD countries in the sample.This changes your regression output as follows (numbers in parenthesis are heteroskedasticity robust standard errors):   = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046 (0.004)(0.0063) Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case. (c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory? = 0.048 - 0.0404 RelProd60,R2 = 0.82,SER = 0.0046
(0.004)(0.0063)
Test for evidence of convergence now.If your conclusion is different than in (a),speculate why this is the case.
(c)The authors of your textbook have informed you that unless you have more than 100 observations,it may not be plausible to assume that the distribution of your OLS estimators is normal.What are the implications here for testing the significance of your theory?
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(continuation from Chapter 4,number 3)You have obtained a sub-sample of 1744 individuals from the Current Population Survey (CPS)and are interested in the relationship between weekly earnings and age.The regression,using heteroskedasticity-robust standard errors,yielded the following result: (continuation from Chapter 4,number 3)You have obtained a sub-sample of 1744 individuals from the Current Population Survey (CPS)and are interested in the relationship between weekly earnings and age.The regression,using heteroskedasticity-robust standard errors,yielded the following result:   = 239.16 + 5.20×Age ,R2 = 0.05,SER = 287.21. , (20.24)(0.57) where Earn and Age are measured in dollars and years respectively. (a)Is the relationship between Age and Earn statistically significant? (b)The variance of the error term and the variance of the dependent variable are related.Given the distribution of earnings,do you think it is plausible that the distribution of errors is normal? (c)Construct a 95% confidence interval for both the slope and the intercept. = 239.16 + 5.20×Age ,R2 = 0.05,SER = 287.21. ,
(20.24)(0.57)
where Earn and Age are measured in dollars and years respectively.
(a)Is the relationship between Age and Earn statistically significant?
(b)The variance of the error term and the variance of the dependent variable are related.Given the distribution of earnings,do you think it is plausible that the distribution of errors is normal?
(c)Construct a 95% confidence interval for both the slope and the intercept.
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You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year ( <strong>You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year (   )and the growth rate of the respective state real GDP (gy).The results are as follows   = 2.81 - 0.23   gy,R2= 0.36,SER = 0.78 (0.12)(0.04) Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval</strong> A)[2.57,3.05] B)[-0.31,0.15] C)[-0.31,-0.15] D)[-0.33,-0.13] )and the growth rate of the respective state real GDP (gy).The results are as follows <strong>You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year (   )and the growth rate of the respective state real GDP (gy).The results are as follows   = 2.81 - 0.23   gy,R2= 0.36,SER = 0.78 (0.12)(0.04) Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval</strong> A)[2.57,3.05] B)[-0.31,0.15] C)[-0.31,-0.15] D)[-0.33,-0.13] = 2.81 - 0.23 <strong>You have collected data for the 50 U.S.states and estimated the following relationship between the change in the unemployment rate from the previous year (   )and the growth rate of the respective state real GDP (gy).The results are as follows   = 2.81 - 0.23   gy,R2= 0.36,SER = 0.78 (0.12)(0.04) Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval</strong> A)[2.57,3.05] B)[-0.31,0.15] C)[-0.31,-0.15] D)[-0.33,-0.13] gy,R2= 0.36,SER = 0.78 (0.12)(0.04)
Assuming that the estimator has a normal distribution,the 95% confidence interval for the slope is approximately the interval

A)[2.57,3.05]
B)[-0.31,0.15]
C)[-0.31,-0.15]
D)[-0.33,-0.13]
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Using 143 observations,assume that you had estimated a simple regression function and that your estimate for the slope was 0.04,with a standard error of 0.01.You want to test whether or not the estimate is statistically significant.Which of the following possible decisions is the only correct one:

A)you decide that the coefficient is small and hence most likely is zero in the population
B)the slope is statistically significant since it is four standard errors away from zero
C)the response of Y given a change in X must be economically important since it is statistically significant
D)since the slope is very small,so must be the regression R2.
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(Requires Appendix)(Continuation from Chapter 4)At a recent county fair,you observed that at one stand people's weight was forecasted,and were surprised by the accuracy (within a range).Thinking about how the person could have predicted your weight fairly accurately (despite the fact that she did not know about your "heavy bones"),you think about how this could have been accomplished.You remember that medical charts for children contain 5%,25%,50%,75% and 95% lines for a weight/height relationship and decide to conduct an experiment with 110 of your peers.You collect the data and calculate the following sums: (Requires Appendix)(Continuation from Chapter 4)At a recent county fair,you observed that at one stand people's weight was forecasted,and were surprised by the accuracy (within a range).Thinking about how the person could have predicted your weight fairly accurately (despite the fact that she did not know about your heavy bones),you think about how this could have been accomplished.You remember that medical charts for children contain 5%,25%,50%,75% and 95% lines for a weight/height relationship and decide to conduct an experiment with 110 of your peers.You collect the data and calculate the following sums:   where the height is measured in inches and weight in pounds.(Small letters refer to deviations from means as in zi = Zi -   . ) (a)Calculate the homoskedasticity-only standard errors and,using the resulting t-statistic,perform a test on the null hypothesis that there is no relationship between height and weight in the population of college students. (b)What is the alternative hypothesis in the above test,and what level of significance did you choose? (c)Statistics and econometrics textbooks often ask you to calculate critical values based on some level of significance,say 1%,5%,or 10%.What sort of criteria do you think should play a role in determining which level of significance to choose? (d)What do you think the relationship is between testing for the significance of the slope and whether or not the regression R2 is zero? where the height is measured in inches and weight in pounds.(Small letters refer to deviations from means as in zi = Zi - (Requires Appendix)(Continuation from Chapter 4)At a recent county fair,you observed that at one stand people's weight was forecasted,and were surprised by the accuracy (within a range).Thinking about how the person could have predicted your weight fairly accurately (despite the fact that she did not know about your heavy bones),you think about how this could have been accomplished.You remember that medical charts for children contain 5%,25%,50%,75% and 95% lines for a weight/height relationship and decide to conduct an experiment with 110 of your peers.You collect the data and calculate the following sums:   where the height is measured in inches and weight in pounds.(Small letters refer to deviations from means as in zi = Zi -   . ) (a)Calculate the homoskedasticity-only standard errors and,using the resulting t-statistic,perform a test on the null hypothesis that there is no relationship between height and weight in the population of college students. (b)What is the alternative hypothesis in the above test,and what level of significance did you choose? (c)Statistics and econometrics textbooks often ask you to calculate critical values based on some level of significance,say 1%,5%,or 10%.What sort of criteria do you think should play a role in determining which level of significance to choose? (d)What do you think the relationship is between testing for the significance of the slope and whether or not the regression R2 is zero? . )
(a)Calculate the homoskedasticity-only standard errors and,using the resulting t-statistic,perform a test on the null hypothesis that there is no relationship between height and weight in the population of college students.
(b)What is the alternative hypothesis in the above test,and what level of significance did you choose?
(c)Statistics and econometrics textbooks often ask you to calculate critical values based on some level of significance,say 1%,5%,or 10%.What sort of criteria do you think should play a role in determining which level of significance to choose?
(d)What do you think the relationship is between testing for the significance of the slope and whether or not the regression R2 is zero?
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You have collected 14,925 observations from the Current Population Survey.There are 6,285 females in the sample,and 8,640 males.The females report a mean of average hourly earnings of $16.50 with a standard deviation of $9.06.The males have an average of $20.09 and a standard deviation of $10.85.The overall mean average hourly earnings is $18.58.
a.Using the t-statistic for testing differences between two means (section 3.4 of your textbook),decide whether or not there is sufficient evidence to reject the null hypothesis that females and males have identical average hourly earnings.
b.You decide to run two regressions: first,you simply regress average hourly earnings on an intercept only.Next,you repeat this regression,but only for the 6,285 females in the sample.What will the regression coefficients be in each of the two regressions?
c.Finally you run a regression over the entire sample of average hourly earnings on an intercept and a binary variable DFemme,where this variable takes on a value of 1 if the individual is a female,and is 0 otherwise.What will be the value of the intercept? What will be the value of the coefficient of the binary variable?
d.What is the standard error on the slope coefficient? What is the t-statistic?
e.Had you used the homoskedasticity-only standard error in (d)and calculated the t-statistic,how would you have had to change the test-statistic in (a)to get the identical result?
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(Continuation from Chapter 4,number 5)You have learned in one of your economics courses that one of the determinants of per capita income (the "Wealth of Nations")is the population growth rate.Furthermore you also found out that the Penn World Tables contain income and population data for 104 countries of the world.To test this theory,you regress the GDP per worker (relative to the United States)in 1990 (RelPersInc)on the difference between the average population growth rate of that country (n)to the U.S.average population growth rate (nus )for the years 1980 to 1990.This results in the following regression output: (Continuation from Chapter 4,number 5)You have learned in one of your economics courses that one of the determinants of per capita income (the Wealth of Nations)is the population growth rate.Furthermore you also found out that the Penn World Tables contain income and population data for 104 countries of the world.To test this theory,you regress the GDP per worker (relative to the United States)in 1990 (RelPersInc)on the difference between the average population growth rate of that country (n)to the U.S.average population growth rate (nus )for the years 1980 to 1990.This results in the following regression output:   = 0.518 - 18.831×(n - nus),R2=0.522,SER = 0.197 (0.056)(3.177) (a)Is there any reason to believe that the variance of the error terms is homoskedastic? (b)Is the relationship statistically significant? = 0.518 - 18.831×(n - nus),R2=0.522,SER = 0.197
(0.056)(3.177)
(a)Is there any reason to believe that the variance of the error terms is homoskedastic?
(b)Is the relationship statistically significant?
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(Continuation from Chapter 4)Sir Francis Galton,a cousin of James Darwin,examined the relationship between the height of children and their parents towards the end of the 19th century.It is from this study that the name "regression" originated.You decide to update his findings by collecting data from 110 college students,and estimate the following relationship: (Continuation from Chapter 4)Sir Francis Galton,a cousin of James Darwin,examined the relationship between the height of children and their parents towards the end of the 19th century.It is from this study that the name regression originated.You decide to update his findings by collecting data from 110 college students,and estimate the following relationship:   = 19.6 + 0.73 × Midparh,R2 = 0.45,SER = 2.0 (7.2)(0.10) where Studenth is the height of students in inches,and Midparh is the average of the parental heights.Values in parentheses are heteroskedasticity robust standard errors.(Following Galton's methodology,both variables were adjusted so that the average female height was equal to the average male height. ) (a)Test for the statistical significance of the slope coefficient. (b)If children,on average,were expected to be of the same height as their parents,then this would imply two hypotheses,one for the slope and one for the intercept. (i)What should the null hypothesis be for the intercept? Calculate the relevant t-statistic and carry out the hypothesis test at the 1% level. (ii)What should the null hypothesis be for the slope? Calculate the relevant t-statistic and carry out the hypothesis test at the 5% level. (c)Can you reject the null hypothesis that the regression R2 is zero? (d)Construct a 95% confidence interval for a one inch increase in the average of parental height. = 19.6 + 0.73 × Midparh,R2 = 0.45,SER = 2.0
(7.2)(0.10)
where Studenth is the height of students in inches,and Midparh is the average of the parental heights.Values in parentheses are heteroskedasticity robust standard errors.(Following Galton's methodology,both variables were adjusted so that the average female height was equal to the average male height. )
(a)Test for the statistical significance of the slope coefficient.
(b)If children,on average,were expected to be of the same height as their parents,then this would imply two hypotheses,one for the slope and one for the intercept.
(i)What should the null hypothesis be for the intercept? Calculate the relevant t-statistic and carry out the hypothesis test at the 1% level.
(ii)What should the null hypothesis be for the slope? Calculate the relevant t-statistic and carry out the hypothesis test at the 5% level.
(c)Can you reject the null hypothesis that the regression R2 is zero?
(d)Construct a 95% confidence interval for a one inch increase in the average of parental height.
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If the errors are heteroskedastic,then

A)OLS is BLUE.
B)WLS is BLUE if the conditional variance of the errors is known up to a constant factor of proportionality.
C)LAD is BLUE if the conditional variance of the errors is known up to a constant factor of proportionality.
D)OLS is efficient.
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The homoskedastic normal regression assumptions are all of the following with the exception of:

A)the errors are homoskedastic.
B)the errors are normally distributed.
C)there are no outliers.
D)there are at least 10 observations.
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In order to formulate whether or not the alternative hypothesis is one-sided or two-sided,you need some guidance from economic theory.Choose at least three examples from economics or other fields where you have a clear idea what the null hypothesis and the alternative hypothesis for the slope coefficient should be.Write a brief justification for your answer.
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Carefully discuss the advantages of using heteroskedasticity-robust standard errors over standard errors calculated under the assumption of homoskedasticity.Give at least five examples where it is very plausible to assume that the errors display heteroskedasticity.
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(Requires Appendix material from Chapters 4 and 5)Shortly before you are making a group presentation on the testscore/student-teacher ratio results,you realize that one of your peers forgot to type all the relevant information on one of your slides.Here is what you see: (Requires Appendix material from Chapters 4 and 5)Shortly before you are making a group presentation on the testscore/student-teacher ratio results,you realize that one of your peers forgot to type all the relevant information on one of your slides.Here is what you see:   = 698.9 - STR,R2 = 0.051,SER = 18.6 (9.47)(0.48) In addition,your group member explains that he ran the regression in a standard spreadsheet program,and that,as a result,the standard errors in parenthesis are homoskedasticity-only standard errors. (a)Find the value for the slope coefficient. (b)Calculate the t-statistic for the slope and the intercept.Test the hypothesis that the intercept and the slope are different from zero. (c)Should you be concerned that your group member only gave you the result for the homoskedasticity-only standard error formula,instead of using the heteroskedasticity-robust standard errors? = 698.9 - STR,R2 = 0.051,SER = 18.6
(9.47)(0.48)
In addition,your group member explains that he ran the regression in a standard spreadsheet program,and that,as a result,the standard errors in parenthesis are homoskedasticity-only standard errors.
(a)Find the value for the slope coefficient.
(b)Calculate the t-statistic for the slope and the intercept.Test the hypothesis that the intercept and the slope are different from zero.
(c)Should you be concerned that your group member only gave you the result for the homoskedasticity-only standard error formula,instead of using the heteroskedasticity-robust standard errors?
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Consider the estimated equation from your textbook <strong>Consider the estimated equation from your textbook   =698.9 - 2.28   STR,R2 = 0.051,SER = 18.6 (10.4)(0.52) The t-statistic for the slope is approximately</strong> A)4.38 B)67.20 C)0.52 D)1.76 =698.9 - 2.28 <strong>Consider the estimated equation from your textbook   =698.9 - 2.28   STR,R2 = 0.051,SER = 18.6 (10.4)(0.52) The t-statistic for the slope is approximately</strong> A)4.38 B)67.20 C)0.52 D)1.76 STR,R2 = 0.051,SER = 18.6 (10.4)(0.52)
The t-statistic for the slope is approximately

A)4.38
B)67.20
C)0.52
D)1.76
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(Requires Appendix material)Your textbook shows that OLS is a linear estimator (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case. 1 = (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case. ,where (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case. .For OLS to be conditionally unbiased,the following two conditions must hold: (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case. and (Requires Appendix material)Your textbook shows that OLS is a linear estimator   1 =   ,where   .For OLS to be conditionally unbiased,the following two conditions must hold:   and   = 1.Show that this is the case. = 1.Show that this is the case.
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Using the California School data set from your textbook,you run the following regression: Using the California School data set from your textbook,you run the following regression:   = 698.9 - 2.28 STR n = 420,SER = 9.4 where TestScore is the average test score in the district and STR is the student-teacher ratio.The sample standard deviation of test scores is 19.05,and the sample standard deviation of the student teacher ratio is 1.89. a. Find the regression R2 and the correlation coefficient between test scores and the student teacher ratio. b. Find the homoskedasticity-only standard error of the slope. = 698.9 - 2.28 STR
n = 420,SER = 9.4
where TestScore is the average test score in the district and STR is the student-teacher ratio.The sample standard deviation of test scores is 19.05,and the sample standard deviation of the student teacher ratio is 1.89.
a.
Find the regression R2 and the correlation coefficient between test scores and the student teacher ratio.
b.
Find the homoskedasticity-only standard error of the slope.
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Consider the sample regression function Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  i = Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  + Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  Xi.The table below lists estimates for the slope ( Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  )and the variance of the slope estimator ( Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.  ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.
Consider the sample regression function   i =   +   Xi.The table below lists estimates for the slope (   )and the variance of the slope estimator (   ).In each case calculate the p-value for the null hypothesis of β1 = 0 and a two-tailed alternative hypothesis.Indicate in which case you would reject the null hypothesis at the 5% significance level.
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In a Monte Carlo study,econometricians generate multiple sample regression functions from a known population regression function.For example,the population regression function could be Yi = β0 + β1Xi = 100 - 0.5 Xi.The Xs could be generated randomly or,for simplicity,be nonrandom ("fixed over repeated samples").If we had ten of these Xs,say,and generated twenty Ys,we would obviously always have all observations on a straight line,and the least squares formulae would always return values of 100 and 0.5 numerically.However,if we added an error term,where the errors would be drawn randomly from a normal distribution,say,then the OLS formulae would give us estimates that differed from the population regression function values.Assume you did just that and recorded the values for the slope and the intercept.Then you did the same experiment again (each one of these is called a "replication").And so forth.After 1,000 replications,you plot the 1,000 intercepts and slopes,and list their summary statistics.
Sample: 1 1000
BETA0_HAT BETA1_HAT
Mean 100.014 -0.500
Median 100.021 -0.500
Maximum 106.348 -0.468
Minimum 93.862 -0.538
Std.Dev.1.994 0.011
Skewness 0.013 -0.042
Kurtosis 3.026 2.986
Jarque-Bera 0.055 0.305
Probability 0.973 0.858
Sum 100014.353 -499.857
Sum Sq.Dev.3972.403 0.118
Observations 1000.000 1000.000
Here are the corresponding graphs: In a Monte Carlo study,econometricians generate multiple sample regression functions from a known population regression function.For example,the population regression function could be Yi = β0 + β1Xi = 100 - 0.5 Xi.The Xs could be generated randomly or,for simplicity,be nonrandom (fixed over repeated samples).If we had ten of these Xs,say,and generated twenty Ys,we would obviously always have all observations on a straight line,and the least squares formulae would always return values of 100 and 0.5 numerically.However,if we added an error term,where the errors would be drawn randomly from a normal distribution,say,then the OLS formulae would give us estimates that differed from the population regression function values.Assume you did just that and recorded the values for the slope and the intercept.Then you did the same experiment again (each one of these is called a replication).And so forth.After 1,000 replications,you plot the 1,000 intercepts and slopes,and list their summary statistics. Sample: 1 1000 BETA0_HAT BETA1_HAT Mean 100.014 -0.500 Median 100.021 -0.500 Maximum 106.348 -0.468 Minimum 93.862 -0.538 Std.Dev.1.994 0.011 Skewness 0.013 -0.042 Kurtosis 3.026 2.986 Jarque-Bera 0.055 0.305 Probability 0.973 0.858 Sum 100014.353 -499.857 Sum Sq.Dev.3972.403 0.118 Observations 1000.000 1000.000 Here are the corresponding graphs:     Using the means listed next to the graphs,you see that the averages are not exactly 100 and -0.5.However,they are close. Test for the difference of these averages from the population values to be statistically significant. In a Monte Carlo study,econometricians generate multiple sample regression functions from a known population regression function.For example,the population regression function could be Yi = β0 + β1Xi = 100 - 0.5 Xi.The Xs could be generated randomly or,for simplicity,be nonrandom (fixed over repeated samples).If we had ten of these Xs,say,and generated twenty Ys,we would obviously always have all observations on a straight line,and the least squares formulae would always return values of 100 and 0.5 numerically.However,if we added an error term,where the errors would be drawn randomly from a normal distribution,say,then the OLS formulae would give us estimates that differed from the population regression function values.Assume you did just that and recorded the values for the slope and the intercept.Then you did the same experiment again (each one of these is called a replication).And so forth.After 1,000 replications,you plot the 1,000 intercepts and slopes,and list their summary statistics. Sample: 1 1000 BETA0_HAT BETA1_HAT Mean 100.014 -0.500 Median 100.021 -0.500 Maximum 106.348 -0.468 Minimum 93.862 -0.538 Std.Dev.1.994 0.011 Skewness 0.013 -0.042 Kurtosis 3.026 2.986 Jarque-Bera 0.055 0.305 Probability 0.973 0.858 Sum 100014.353 -499.857 Sum Sq.Dev.3972.403 0.118 Observations 1000.000 1000.000 Here are the corresponding graphs:     Using the means listed next to the graphs,you see that the averages are not exactly 100 and -0.5.However,they are close. Test for the difference of these averages from the population values to be statistically significant. Using the means listed next to the graphs,you see that the averages are not exactly 100 and -0.5.However,they are "close." Test for the difference of these averages from the population values to be statistically significant.
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In many of the cases discussed in your textbook,you test for the significance of the slope at the 5% level.What is the size of the test? What is the power of the test? Why is the probability of committing a Type II error so large here?
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Changing the units of measurement obviously will have an effect on the slope of your regression function.For example,let Y*= aY and X* = bX.Then it is easy but tedious to show that Changing the units of measurement obviously will have an effect on the slope of your regression function.For example,let Y*= aY and X* = bX.Then it is easy but tedious to show that   .Given this result,how do you think the standard errors and the regression R2 will change? .Given this result,how do you think the standard errors and the regression R2 will change?
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The effect of decreasing the student-teacher ratio by one is estimated to result in an improvement of the districtwide score by 2.28 with a standard error of 0.52.Construct a 90% and 99% confidence interval for the size of the slope coefficient and the corresponding predicted effect of changing the student-teacher ratio by one.What is the intuition on why the 99% confidence interval is wider than the 90% confidence interval?
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Using data from the Current Population Survey,you estimate the following relationship between average hourly earnings (ahe)and the number of years of education (educ): Using data from the Current Population Survey,you estimate the following relationship between average hourly earnings (ahe)and the number of years of education (educ):   = -4.58 + 1.71 educ The heteroskedasticity-robust standard error on the slope is (0.03).Calculate the 95% confidence interval for the slope.Repeat the exercise using the 90% and then the 99% confidence interval.Can you reject the null hypothesis that the slope coefficient is zero in the population? = -4.58 + 1.71 educ
The heteroskedasticity-robust standard error on the slope is (0.03).Calculate the 95% confidence interval for the slope.Repeat the exercise using the 90% and then the 99% confidence interval.Can you reject the null hypothesis that the slope coefficient is zero in the population?
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Consider the following two models involving binary variables as explanatory variables: Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other? = Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other? + Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other? DFemme and Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other? = Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other? DFemme + Consider the following two models involving binary variables as explanatory variables:   =   +   DFemme and   =   DFemme +   Male where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients. What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other? Male
where Wage is the hourly wage rate,DFemme is a binary variable that is equal to 1 if the person is a female,and 0 if the person is a male.Male = 1 - DFemme.Even though you have not learned about regression functions with two explanatory variables (or regressions without an intercept),assume that you had estimated both models,i.e. ,you obtained the estimates for the regression coefficients.
What is the predicted wage for a male in the two models? What is the predicted wage for a female in the two models? What is the relationship between the β s and the φs? Why would you prefer one model over the other?
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(Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) 1 to be var( (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) 1 (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) X1,... ,Xn)= (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) where the conditions for conditional unbiasedness are (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) = 0 and (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights (Requires Appendix material and Calculus)Equation (5.36)in your textbook derives the conditional variance for any old conditionally unbiased estimator   1 to be var(   1   X1,... ,Xn)=   where the conditions for conditional unbiasedness are   = 0 and   = 1.As an alternative to the BLUE proof presented in your textbook,you recall from one of your calculus courses that you could minimize the variance subject to the two constraints,thereby making the variance as small as possible while the constraints are holding.Show that in doing so you get the OLS weights   .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). ) .(You may assume that X1,... ,Xn are nonrandom (fixed over repeated samples). )
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Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision.
(a) Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. = Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. 0 + Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. 1pi,where qd is the quantity demanded for a good,and p is its price.
(b) Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. = Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. 0 + Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. 1 Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. ,where Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. is the actual house price,and Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. is the assessed house price.You want to test whether or not the assessment is correct,on average.
(c) Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. i = Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. 0 + Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. 1 Below you are asked to decide on whether or not to use a one-sided alternative or a two-sided alternative hypothesis for the slope coefficient.Briefly justify your decision. (a)   =   0 +   1pi,where qd is the quantity demanded for a good,and p is its price. (b)   =   0 +   1   ,where   is the actual house price,and   is the assessed house price.You want to test whether or not the assessment is correct,on average. (c)   i =   0 +   1   ,where C is household consumption,and Yd is personal disposable income. ,where C is household consumption,and Yd is personal disposable income.
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Your textbook states that under certain restrictive conditions,the t- statistic has a Student t-distribution with n-2 degrees of freedom.The loss of two degrees of freedom is the result of OLS forcing two restrictions onto the data.What are these two conditions,and when did you impose them onto the data set in your derivation of the OLS estimator?
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Let Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. be distributed N(0, Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. being distributed N(β1, Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. ),where Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. .Statistical inference would be straightforward if Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. was known.One way to deal with this problem is to replace Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. with an estimator Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. .Clearly since this introduces more uncertainty,you cannot expect Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about Let   be distributed N(0,   ),i.e. ,the errors are distributed normally with a constant variance (homoskedasticity).This results in   being distributed N(β1,   ),where   .Statistical inference would be straightforward if   was known.One way to deal with this problem is to replace   with an estimator   .Clearly since this introduces more uncertainty,you cannot expect   to be still normally distributed.Indeed,the t-statistic now follows Student's t distribution.Look at the table for the Student t-distribution and focus on the 5% two-sided significance level.List the critical values for 10 degrees of freedom,30 degrees of freedom,60 degrees of freedom,and finally ∞ degrees of freedom.Describe how the notion of uncertainty about   can be incorporated about the tails of the t-distribution as the degrees of freedom increase. can be incorporated about the tails of the t-distribution as the degrees of freedom increase.
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Assume that the homoskedastic normal regression assumption hold.Using the Student t-distribution,find the critical value for the following situation:
(a)n = 28,5% significance level,one-sided test.
(b)n = 40,1% significance level,two-sided test.
(c)n = 10,10% significance level,one-sided test.
(d)n = ∞,5% significance level,two-sided test.
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Using the California School data set from your textbook,you run the following regression: Using the California School data set from your textbook,you run the following regression:   = 698.9 - 2.28 STR n = 420,R2 = 0.051,SER = 18.6 where TestScore is the average test score in the district and STR is the student-teacher ratio.Using heteroskedasticity robust standard errors,you find   while choosing the homoskedasticity-only option,the standard error is 0.48. a.Calculate the t-statistic for both standard errors. b.Which of the two t-statistics should you base your inference on? = 698.9 - 2.28 STR
n = 420,R2 = 0.051,SER = 18.6
where TestScore is the average test score in the district and STR is the student-teacher ratio.Using heteroskedasticity robust standard errors,you find Using the California School data set from your textbook,you run the following regression:   = 698.9 - 2.28 STR n = 420,R2 = 0.051,SER = 18.6 where TestScore is the average test score in the district and STR is the student-teacher ratio.Using heteroskedasticity robust standard errors,you find   while choosing the homoskedasticity-only option,the standard error is 0.48. a.Calculate the t-statistic for both standard errors. b.Which of the two t-statistics should you base your inference on? while choosing the homoskedasticity-only option,the standard error is 0.48.
a.Calculate the t-statistic for both standard errors.
b.Which of the two t-statistics should you base your inference on?
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The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right? = The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right? + The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right? × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying ("beta")convergence.Using a standard regression package,you get the following output:
Dependent Variable: G6090
Method: Least Squares
Date: 07/11/06 Time: 05:46
Sample: 1 104
Included observations: 104
White Heteroskedasticity-Consistent Standard Errors & Covariance The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right? The neoclassical growth model predicts that for identical savings rates and population growth rates,countries should converge to the per capita income level.This is referred to as the convergence hypothesis.One way to test for the presence of convergence is to compare the growth rates over time to the initial starting level,i.e. ,to run the regression   =   +   × RelProd60 ,where g6090 is the average annual growth rate of GDP per worker for the 1960-1990 sample period,and RelProd60 is GDP per worker relative to the United States in 1960.Under the null hypothesis of no convergence,β1 = 0;H1 : β1 < 0,implying (beta)convergence.Using a standard regression package,you get the following output: Dependent Variable: G6090 Method: Least Squares Date: 07/11/06 Time: 05:46 Sample: 1 104 Included observations: 104 White Heteroskedasticity-Consistent Standard Errors & Covariance     You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right? You are delighted to see that this program has already calculated p-values for you.However,a peer of yours points out that the correct p-value should be 0.4562.Who is right?
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Your textbook discussed the regression model when X is a binary variable
Yi = β0 + βiDi + ui,i = 1,... ,n
Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the intercept coefficient,prove that Your textbook discussed the regression model when X is a binary variable Yi = β0 + βiDi + ui,i = 1,... ,n Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the intercept coefficient,prove that   is the average wage for males. is the average wage for males.
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58
Your textbook discussed the regression model when X is a binary variable
Yi = β0 + β1Di + ui,i = 1... ,n
Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the slope coefficient,prove that Your textbook discussed the regression model when X is a binary variable Yi = β0 + β1Di + ui,i = 1... ,n Let Y represent wages,and let D be one for females,and 0 for males.Using the OLS formula for the slope coefficient,prove that   is the difference between the average wage for males and the average wage for females. is the difference between the average wage for males and the average wage for females.
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Assume that your population regression function is
Yi = βiXi + ui
i.e. ,a regression through the origin (no intercept).Under the homoskedastic normal regression assumptions,the t-statistic will have a Student t distribution with n-1 degrees of freedom,not n-2 degrees of freedom,as was the case in Chapter 5 of your textbook.Explain.Do you think that the residuals will still sum to zero for this case?
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