Deck 13: Multiple Regression

ملء الشاشة (f)
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سؤال
In regression analysis, the response variable is the

A)independent variable
B)dependent variable
C)slope of the regression function
D)intercept
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سؤال
In order to test for the significance of a regression model involving 3 independent variables and 47 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)47 and 3
B)3 and 47
C)2 and 43
D)3 and 43
سؤال
In a multiple regression analysis SSR = 1,000 and SSE = 200. The F statistic for this model is

A)5.0
B)1,200
C)800
D)Not enough information is provided to answer this question.
سؤال
A measure of goodness of fit for the estimated regression equation is the

A)multiple coefficient of determination
B)mean square due to error
C)mean square due to regression
D)sample size
سؤال
The multiple coefficient of determination is

A)MSR/MST
B)MSR/MSE
C)SSR/SST
D)SSE/SSR
سؤال
A multiple regression model has

A)only one independent variable
B)more than one dependent variable
C)more than one independent variable
D)at least 2 dependent variables
سؤال
As the goodness of fit for the estimated multiple regression equation increases,

A)the value of the adjusted multiple coefficient of determination decreases
B)the value of the regression equation's constant b0 decreases
C)the value of the multiple coefficient of determination increases
D)the value of the correlation coefficient increases
سؤال
In regression analysis, an outlier is an observation whose

A)mean is larger than the standard deviation
B)residual is zero
C)mean is zero
D)residual is much larger than the rest of the residual values
سؤال
A regression model involved 5 independent variables and 126 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)131 degrees of freedom
B)125 degrees of freedom
C)130 degrees of freedom
D)4 degrees of freedom
سؤال
A multiple regression model has the form <strong>A multiple regression model has the form   = 7 + 2 x<sub>1</sub> + 9 x<sub>2</sub> As x<sub>1</sub> increases by 1 unit (holding x<sub>2</sub> constant),   is expected to</strong> A)increase by 9 units B)decrease by 9 units C)increase by 2 units D)decrease by 2 units <div style=padding-top: 35px> = 7 + 2 x1 + 9 x2 As x1 increases by 1 unit (holding x2 constant), <strong>A multiple regression model has the form   = 7 + 2 x<sub>1</sub> + 9 x<sub>2</sub> As x<sub>1</sub> increases by 1 unit (holding x<sub>2</sub> constant),   is expected to</strong> A)increase by 9 units B)decrease by 9 units C)increase by 2 units D)decrease by 2 units <div style=padding-top: 35px> is expected to

A)increase by 9 units
B)decrease by 9 units
C)increase by 2 units
D)decrease by 2 units
سؤال
If a qualitative variable has k levels, the number of dummy variables required is

A)k - 1
B)k
C)k + 1
D)2k
سؤال
In a multiple regression model, the error term ε\varepsilon is assumed to be a random variable with a mean of

A)zero
B)-1
C)1
D)any value
سؤال
A variable that cannot be measured in terms of how much or how many but instead is assigned values to represent categories is called

A)an interaction
B)a constant variable
C)a category variable
D)a qualitative variable
سؤال
A variable that takes on the values of 0 or 1 and is used to incorporate the effect of qualitative variables in a regression model is called

A)an interaction
B)a constant variable
C)a dummy variable
D)None of these alternatives is correct.
سؤال
The numerical value of the coefficient of determination

A)is always larger than the coefficient of correlation
B)is always smaller than the coefficient of correlation
C)is negative if the coefficient of determination is negative
D)can be larger or smaller than the coefficient of correlation
سؤال
The correct relationship between SST, SSR, and SSE is given by

A)SSR = SST + SSE
B)SSR = SST - SSE
C)SSE = SSR - SST
D)None of these alternatives is correct.
سؤال
For a multiple regression model, SSR = 600 and SSE = 200. The multiple coefficient of determination is

A)0.333
B)0.275
C)0.300
D)0.75
سؤال
In a multiple regression model, the variance of the error term ε\varepsilon is assumed to be

A)the same for all values of the dependent variable
B)zero
C)the same for all values of the independent variable
D)-1
سؤال
The ratio of MSE/MSR yields

A)SST
B)the F statistic
C)SSR
D)None of these alternatives is correct.
سؤال
In a multiple regression analysis involving 15 independent variables and 200 observations, SST = 800 and SSE = 240. The coefficient of determination is

A)0.300
B)0.192
C)0.500
D)0.700
سؤال
A term used to describe the case when the independent variables in a multiple regression model are correlated is

A)regression
B)correlation
C)multicollinearity
D)None of the alternative answers are correct.
سؤال
In a residual plot that does not suggest we should challenge the assumptions of our regression model, we would expect to see

A)a horizontal band of points centered near zero
B)a widening band of points
C)a band of points having a slope consistent with that of the regression equation
D)a parabolic band of points
سؤال
In a multiple regression model, the error term ε\varepsilon is assumed to

A)have a mean of 1
B)have a variance of zero
C)have a standard deviation of 1
D)be normally distributed
سؤال
In order to test for the significance of a regression model involving 14 independent variables and 255 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)14 and 255
B)255 and 14
C)13 and 240
D)14 and 240
سؤال
In multiple regression analysis, the correlation among the independent variables is termed

A)homoscedasticity
B)linearity
C)multicollinearity
D)adjusted coefficient of determination
سؤال
In multiple regression analysis,

A)there can be any number of dependent variables but only one independent variable
B)there must be only one independent variable
C)the coefficient of determination must be larger than 1
D)there can be several independent variables, but only one dependent variable
سؤال
A regression model in which more than one independent variable is used to predict the dependent variable is called

A)a simple linear regression model
B)a multiple regression model
C)an independent model
D)None of these alternatives is correct.
سؤال
A multiple regression model has the form <strong>A multiple regression model has the form   = 5 + 6x + 7w As x increases by 1 unit (holding w constant), y is expected to</strong> A)increase by 11 units B)decrease by 11 units C)increase by 6 units D)decrease by 6 units <div style=padding-top: 35px> = 5 + 6x + 7w As x increases by 1 unit (holding w constant), y is expected to

A)increase by 11 units
B)decrease by 11 units
C)increase by 6 units
D)decrease by 6 units
سؤال
In a multiple regression model, the values of the error term , ε\varepsilon , are assumed to be

A)zero
B)dependent on each other
C)independent of each other
D)always negative
سؤال
A regression model involved 18 independent variables and 200 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)18 degrees of freedom
B)200 degrees of freedom
C)199 degrees of freedom
D)181 degrees of freedom
سؤال
In order to test for the significance of a regression model involving 4 independent variables and 36 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)4 and 36
B)3 and 35
C)4 and 31
D)4 and 32
سؤال
In order to test for the significance of a regression model involving 8 independent variables and 121 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)8 and 121
B)7 and 120
C)8 and 112
D)7 and 112
سؤال
In a multiple regression analysis involving 12 independent variables and 166 observations, SSR = 878 and SSE = 122. The coefficient of determination is

A)0.1389
B)0.1220
C)0.878
D)0.7317
سؤال
A variable that cannot be measured in numerical terms is called

A)a nonmeasurable random variable
B)a constant variable
C)a dependent variable
D)a qualitative variable
سؤال
A regression analysis involved 6 independent variables and 27 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)27 degrees of freedom
B)26 degrees of freedom
C)21 degrees of freedom
D)20 degrees of freedom
سؤال
A regression analysis involved 17 independent variables and 697 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)696 degrees of freedom
B)16 degrees of freedom
C)713 degrees of freedom
D)714 degrees of freedom
سؤال
The adjusted multiple coefficient of determination is adjusted for

A)the number of dependent variables
B)the number of independent variables
C)the number of equations
D)detrimental situations
سؤال
In a multiple regression analysis involving 5 independent variables and 30 observations, SSR = 360 and SSE = 40. The coefficient of determination is

A)0.80
B)0.90
C)0.25
D)0.15
سؤال
For a multiple regression model, SST = 200 and SSE = 50. The multiple coefficient of determination is

A)0.25
B)4.00
C)250
D)0.75
سؤال
In a multiple regression analysis involving 10 independent variables and 81 observations, SST = 120 and SSE = 42. The coefficient of determination is

A)0.81
B)0.11
C)0.35
D)0.65
سؤال
A dummy variable may take

A)only the value 0 or 1
B)only the value -1 or 1
C)only non-negative values
D)any value between 0 and 1
سؤال
Exhibit 13-1
In a regression model involving 44 observations, the following estimated regression equation was obtained. <strong>Exhibit 13-1 In a regression model involving 44 observations, the following estimated regression equation was obtained.   = 29 + 18x<sub>1</sub> +43x<sub>2</sub> + 87x<sub>3</sub> For this model SSR = 600 and SSE = 400. Refer to Exhibit 13-1. MSR for this model is</strong> A)200 B)10 C)1,000 D)43 <div style=padding-top: 35px> = 29 + 18x1 +43x2 + 87x3
For this model SSR = 600 and SSE = 400.
Refer to Exhibit 13-1. MSR for this model is

A)200
B)10
C)1,000
D)43
سؤال
Exhibit 13-1
In a regression model involving 44 observations, the following estimated regression equation was obtained. <strong>Exhibit 13-1 In a regression model involving 44 observations, the following estimated regression equation was obtained.   = 29 + 18x<sub>1</sub> +43x<sub>2</sub> + 87x<sub>3</sub> For this model SSR = 600 and SSE = 400. Refer to Exhibit 13-1. The computed F statistics for testing the significance of the above model is</strong> A)1.500 B)20.00 C)0.600 D)0.6667 <div style=padding-top: 35px> = 29 + 18x1 +43x2 + 87x3
For this model SSR = 600 and SSE = 400.
Refer to Exhibit 13-1. The computed F statistics for testing the significance of the above model is

A)1.500
B)20.00
C)0.600
D)0.6667
سؤال
Exhibit 13-4
a.
y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
b.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
c. <strong>Exhibit 13-4 a. y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  b. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> c. = b<sub>o</sub> + b<sub>1</sub> x<sub>1</sub> + b<sub>2</sub> x<sub>2</sub> d. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub>  -Refer to Exhibit 13-4. Which equation gives the estimated regression line?</strong> A)equation a B)equation b C)equation c D)equation d <div style=padding-top: 35px>  = bo + b1 x1 + b2 x2
d.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2

-Refer to Exhibit 13-4. Which equation gives the estimated regression line?

A)equation a
B)equation b
C)equation c
D)equation d
سؤال
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. The multiple coefficient of determination for this problem is</strong> A)0.4368 B)0.6960 C)0.3040 D)0.2289 <div style=padding-top: 35px> = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. The multiple coefficient of determination for this problem is

A)0.4368
B)0.6960
C)0.3040
D)0.2289
سؤال
Exhibit 13-4
a.
y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
b.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
c. <strong>Exhibit 13-4 a. y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  b. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> c. = b<sub>o</sub> + b<sub>1</sub> x<sub>1</sub> + b<sub>2</sub> x<sub>2</sub> d. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub>  -Refer to Exhibit 13-4. Which equation describes the multiple regression equation?</strong> A)equation a B)equation b C)equation c D)equation d <div style=padding-top: 35px>  = bo + b1 x1 + b2 x2
d.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2

-Refer to Exhibit 13-4. Which equation describes the multiple regression equation?

A)equation a
B)equation b
C)equation c
D)equation d
سؤال
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The conclusion is that the</strong> A)model is not significant B)model is significant C)slope of x<sub>1</sub> is significant D)slope of x<sub>2</sub> is significant <div style=padding-top: 35px> = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The conclusion is that the

A)model is not significant
B)model is significant
C)slope of x1 is significant
D)slope of x2 is significant
سؤال
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. If SSR = 600 and SSE = 300, the test statistic F is</strong> A)2.33 B)0.70 C)17.5 D)1.75 <div style=padding-top: 35px> = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. If SSR = 600 and SSE = 300, the test statistic F is

A)2.33
B)0.70
C)17.5
D)1.75
سؤال
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. The coefficient of the unit price indicates that if the unit price is</strong> A)increased by $1 (holding advertising constant), sales are expected to increase by $3 B)decreased by $1 (holding advertising constant), sales are expected to decrease by $3 C)increased by $1 (holding advertising constant), sales are expected to increase by $4,000 D)increased by $1 (holding advertising constant), sales are expected to decrease by $3,000 <div style=padding-top: 35px> = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. The coefficient of the unit price indicates that if the unit price is

A)increased by $1 (holding advertising constant), sales are expected to increase by $3
B)decreased by $1 (holding advertising constant), sales are expected to decrease by $3
C)increased by $1 (holding advertising constant), sales are expected to increase by $4,000
D)increased by $1 (holding advertising constant), sales are expected to decrease by $3,000
سؤال
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. If we want to test for the significance of the regression model, the critical value of F at 95% confidence is</strong> A)3.68 B)3.29 C)3.24 D)4.54 <div style=padding-top: 35px> = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. If we want to test for the significance of the regression model, the critical value of F at 95% confidence is

A)3.68
B)3.29
C)3.24
D)4.54
سؤال
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
 <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> C) = 145.321 + 25.625x<sub>1</sub> - 5.720x<sub>2</sub> + 0.823x<sub>3</sub> D) = 48.682 + 9.15x<sub>1</sub> + 3.575x<sub>2</sub> + 0.183x<sub>3</sub> <div style=padding-top: 35px>

-Refer to Exhibit 13-5. The estimated regression equation is

A)y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + β\beta 3x3 + ε\varepsilon
B)E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2 + β\beta 3x3
C) <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> C) = 145.321 + 25.625x<sub>1</sub> - 5.720x<sub>2</sub> + 0.823x<sub>3</sub> D) = 48.682 + 9.15x<sub>1</sub> + 3.575x<sub>2</sub> + 0.183x<sub>3</sub> <div style=padding-top: 35px>  = 145.321 + 25.625x1 - 5.720x2 + 0.823x3
D)11ec9ead_435e_cdb6_877e_c7e2c94bd808_TB2074_11= 48.682 + 9.15x1 + 3.575x2 + 0.183x3
سؤال
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. The coefficient of x<sub>2</sub> indicates that if television advertising is increased by $1 (holding the unit price constant), sales are expected to</strong> A)increase by $5 B)increase by $12,000 C)increase by $5,000 D)decrease by $2,000 <div style=padding-top: 35px> = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. The coefficient of x2 indicates that if television advertising is increased by $1 (holding the unit price constant), sales are expected to

A)increase by $5
B)increase by $12,000
C)increase by $5,000
D)decrease by $2,000
سؤال
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The computed F statistic for testing the significance of the above model is</strong> A)43.75 B)0.875 C)50.19 D)7.00 <div style=padding-top: 35px> = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The computed F statistic for testing the significance of the above model is

A)43.75
B)0.875
C)50.19
D)7.00
سؤال
The difference between the observed value of the dependent variable and the value predicted by using the estimated regression equation is the

A)standard error
B)residual
C)predicted interval
D)variance
سؤال
Exhibit 13-4
a.
y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
b.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
c. <strong>Exhibit 13-4 a. y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  b. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> c. = b<sub>o</sub> + b<sub>1</sub> x<sub>1</sub> + b<sub>2</sub> x<sub>2</sub> d. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub>  -Refer to Exhibit 13-4. Which equation describes the multiple regression model?</strong> A)equation a B)equation b C)equation c D)equation d <div style=padding-top: 35px>  = bo + b1 x1 + b2 x2
d.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2

-Refer to Exhibit 13-4. Which equation describes the multiple regression model?

A)equation a
B)equation b
C)equation c
D)equation d
سؤال
Unlike a simple linear regression model, a multiple regression model has more than one

A)intercept
B)dependent variable
C)independent variable
D)error term
سؤال
The mathematical equation that explains how the dependent variable y is related to several independent variables x1, x2, ..., xp and the error term ε\varepsilon is

A)a simple nonlinear regression model
B)a multiple regression model
C)an estimated multiple regression equation
D)a multiple regression equation
سؤال
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The coefficient of determination for the above model is approximately</strong> A)-0.875 B)0.875 C)0.125 D)0.144 <div style=padding-top: 35px> = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The coefficient of determination for the above model is approximately

A)-0.875
B)0.875
C)0.125
D)0.144
سؤال
Exhibit 13-1
In a regression model involving 44 observations, the following estimated regression equation was obtained. <strong>Exhibit 13-1 In a regression model involving 44 observations, the following estimated regression equation was obtained.   = 29 + 18x<sub>1</sub> +43x<sub>2</sub> + 87x<sub>3</sub> For this model SSR = 600 and SSE = 400. Refer to Exhibit 13-1. The coefficient of determination for the above model is</strong> A)0.667 B)0.600 C)0.336 D)0.400 <div style=padding-top: 35px> = 29 + 18x1 +43x2 + 87x3
For this model SSR = 600 and SSE = 400.
Refer to Exhibit 13-1. The coefficient of determination for the above model is

A)0.667
B)0.600
C)0.336
D)0.400
سؤال
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The critical F value at 95% confidence is</strong> A)2.53 B)2.69 C)2.76 D)2.99 <div style=padding-top: 35px> = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The critical F value at 95% confidence is

A)2.53
B)2.69
C)2.76
D)2.99
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The degrees of freedom for the sum of squares explained by the regression (SSR) are</strong> A)2 B)3 C)13 D)15 <div style=padding-top: 35px>
Refer to Exhibit 13-6. The degrees of freedom for the sum of squares explained by the regression (SSR) are

A)2
B)3
C)13
D)15
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
 <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. We want to test whether the parameter  \beta <sub>1</sub> is significant. The test statistic equals</strong> A)-1.4 B)1.4 C)3.6 D)5 <div style=padding-top: 35px>

-Refer to Exhibit 13-6. We want to test whether the parameter β\beta 1 is significant. The test statistic equals

A)-1.4
B)1.4
C)3.6
D)5
سؤال
Exhibit 13-7
A regression model involving 4 independent variables and a sample of 15 periods resulted in the following sum of squares.
SSR = 165
SSE = 60
Refer to Exhibit 13-7. The test statistic from the information provided is

A)2.110
B)3.480
C)4.710
D)6.875
سؤال
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
<strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.   Refer to Exhibit 13-5. The t value obtained from the table to test an individual parameter at the 5% level is</strong> A)2.06 B)2.069 C)2.074 D)2.080 <div style=padding-top: 35px>
Refer to Exhibit 13-5. The t value obtained from the table to test an individual parameter at the 5% level is

A)2.06
B)2.069
C)2.074
D)2.080
سؤال
Exhibit 13-8
The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x1) and their gender (x2) (0 if male and 1 if female). <strong>Exhibit 13-8 The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x<sub>1</sub>) and their gender (x<sub>2</sub>) (0 if male and 1 if female).   = 30 + 0.7x<sub>1</sub> + 3x<sub>2</sub> Also provided are SST = 1,200 and SSE = 384. Refer to Exhibit 13-8. From the above function, it can be said that the expected yearly income of</strong> A)males is $3 more than females B)females is $3 more than males C)males is $3,000 more than females D)females is $3,000 more than males <div style=padding-top: 35px> = 30 + 0.7x1 + 3x2
Also provided are SST = 1,200 and SSE = 384.
Refer to Exhibit 13-8. From the above function, it can be said that the expected yearly income of

A)males is $3 more than females
B)females is $3 more than males
C)males is $3,000 more than females
D)females is $3,000 more than males
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. Carry out the test to determine if there is a relationship among the variables at the 5% level. The null hypothesis should</strong> A)be rejected B)not be rejected C)revised D)None of these alternatives is correct. <div style=padding-top: 35px>
Refer to Exhibit 13-6. Carry out the test to determine if there is a relationship among the variables at the 5% level. The null hypothesis should

A)be rejected
B)not be rejected
C)revised
D)None of these alternatives is correct.
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The interpretation of the coefficient of x<sub>1</sub> is that</strong> A)a one unit change in x<sub>1</sub> will lead to a 3.682 unit decrease in y B)a one unit increase in x<sub>1</sub> will lead to a 3.682 unit decrease in y when all other variables are held constant C)a one unit increase in x<sub>1</sub> will lead to a 3.682 unit decrease in x<sub>2</sub> when all other variables are held constant D)It is impossible to interpret the coefficient. <div style=padding-top: 35px>
Refer to Exhibit 13-6. The interpretation of the coefficient of x1 is that

A)a one unit change in x1 will lead to a 3.682 unit decrease in y
B)a one unit increase in x1 will lead to a 3.682 unit decrease in y when all other variables are held constant
C)a one unit increase in x1 will lead to a 3.682 unit decrease in x2 when all other variables are held constant
D)It is impossible to interpret the coefficient.
سؤال
Exhibit 13-7
A regression model involving 4 independent variables and a sample of 15 periods resulted in the following sum of squares.
SSR = 165
SSE = 60
Refer to Exhibit 13-7. The coefficient of determination is

A)0.3636
B)0.7333
C)0.275
D)0.5
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The test statistic used to determine if there is a relationship among the variables equals</strong> A)-1.4 B)0.2 C)0.77 D)5 <div style=padding-top: 35px>
Refer to Exhibit 13-6. The test statistic used to determine if there is a relationship among the variables equals

A)-1.4
B)0.2
C)0.77
D)5
سؤال
Exhibit 13-8
The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x1) and their gender (x2) (0 if male and 1 if female). <strong>Exhibit 13-8 The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x<sub>1</sub>) and their gender (x<sub>2</sub>) (0 if male and 1 if female).   = 30 + 0.7x<sub>1</sub> + 3x<sub>2</sub> Also provided are SST = 1,200 and SSE = 384. Refer to Exhibit 13-8. The yearly income of a 24-year-old male individual is</strong> A)$13.80 B)$13,800 C)$46,800 D)$49,800 <div style=padding-top: 35px> = 30 + 0.7x1 + 3x2
Also provided are SST = 1,200 and SSE = 384.
Refer to Exhibit 13-8. The yearly income of a 24-year-old male individual is

A)$13.80
B)$13,800
C)$46,800
D)$49,800
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The sum of squares due to error (SSE) equals</strong> A)37.33 B)485.3 C)4,853 D)6,308.9 <div style=padding-top: 35px>
Refer to Exhibit 13-6. The sum of squares due to error (SSE) equals

A)37.33
B)485.3
C)4,853
D)6,308.9
سؤال
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
 <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. Carry out the test of significance for the parameter  \beta <sub>1</sub> at the 5% level. The null hypothesis should be</strong> A)rejected B)not rejected C)revised D)None of these alternatives is correct. <div style=padding-top: 35px>

-Refer to Exhibit 13-5. Carry out the test of significance for the parameter β\beta 1 at the 5% level. The null hypothesis should be

A)rejected
B)not rejected
C)revised
D)None of these alternatives is correct.
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The F value obtained from the table used to test if there is a relationship among the variables at the 5% level equals</strong> A)3.41 B)3.63 C)3.81 D)19.41 <div style=padding-top: 35px>
Refer to Exhibit 13-6. The F value obtained from the table used to test if there is a relationship among the variables at the 5% level equals

A)3.41
B)3.63
C)3.81
D)19.41
سؤال
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
 <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. We want to test whether the parameter  \beta <sub>1</sub> is significant. The test statistic equals</strong> A)0.357 B)2.8 C)14 D)1.96 <div style=padding-top: 35px>

-Refer to Exhibit 13-5. We want to test whether the parameter β\beta 1 is significant. The test statistic equals

A)0.357
B)2.8
C)14
D)1.96
سؤال
Exhibit 13-7
A regression model involving 4 independent variables and a sample of 15 periods resulted in the following sum of squares.
SSR = 165
SSE = 60
Refer to Exhibit 13-7. If we want to test for the significance of the model at 95% confidence, the critical F value (from the table) is

A)3.06
B)3.48
C)3.34
D)3.11
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
 <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> C) = 12.924 - 3.682 x<sub>1</sub> + 45.216 x<sub>2</sub> D) = 4.425 + 2.63 x<sub>1</sub> + 12.56 x<sub>2</sub> <div style=padding-top: 35px>

-Refer to Exhibit 13-6. The estimated regression equation is

A)y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
B)E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
C) <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> C) = 12.924 - 3.682 x<sub>1</sub> + 45.216 x<sub>2</sub> D) = 4.425 + 2.63 x<sub>1</sub> + 12.56 x<sub>2</sub> <div style=padding-top: 35px>  = 12.924 - 3.682 x1 + 45.216 x2
D)11ec9ead_435e_cdb6_877e_c7e2c94bd808_TB2074_11= 4.425 + 2.63 x1 + 12.56 x2
سؤال
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
<strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.   Refer to Exhibit 13-5. The interpretation of the coefficient on x<sub>1</sub> is that</strong> A)a one unit change in x<sub>1</sub> will lead to a 25.625 unit change in y B)a one unit change in x<sub>1</sub> will lead to a 25.625 unit increase in y when all other variables are held constant C)a one unit change in x<sub>1</sub> will lead to a 25.625 unit increase in x<sub>2</sub> when all other variables are held constant D)It is impossible to interpret the coefficient. <div style=padding-top: 35px>
Refer to Exhibit 13-5. The interpretation of the coefficient on x1 is that

A)a one unit change in x1 will lead to a 25.625 unit change in y
B)a one unit change in x1 will lead to a 25.625 unit increase in y when all other variables are held constant
C)a one unit change in x1 will lead to a 25.625 unit increase in x2 when all other variables are held constant
D)It is impossible to interpret the coefficient.
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
 <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. Carry out the test of significance for the parameter  \beta <sub>1</sub> at the 1% level. The null hypothesis should be</strong> A)rejected B)not rejected C)revised D)None of these alternatives is correct. <div style=padding-top: 35px>

-Refer to Exhibit 13-6. Carry out the test of significance for the parameter β\beta 1 at the 1% level. The null hypothesis should be

A)rejected
B)not rejected
C)revised
D)None of these alternatives is correct.
سؤال
Exhibit 13-8
The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x1) and their gender (x2) (0 if male and 1 if female). <strong>Exhibit 13-8 The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x<sub>1</sub>) and their gender (x<sub>2</sub>) (0 if male and 1 if female).   = 30 + 0.7x<sub>1</sub> + 3x<sub>2</sub> Also provided are SST = 1,200 and SSE = 384. Refer to Exhibit 13-8. The yearly income of a 24-year-old female individual is</strong> A)$19.80 B)$19,800 C)$49.80 D)$49,800 <div style=padding-top: 35px> = 30 + 0.7x1 + 3x2
Also provided are SST = 1,200 and SSE = 384.
Refer to Exhibit 13-8. The yearly income of a 24-year-old female individual is

A)$19.80
B)$19,800
C)$49.80
D)$49,800
سؤال
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The t value obtained from the table which is used to test an individual parameter at the 1% level is</strong> A)2.65 B)2.921 C)2.977 D)3.012 <div style=padding-top: 35px>
Refer to Exhibit 13-6. The t value obtained from the table which is used to test an individual parameter at the 1% level is

A)2.65
B)2.921
C)2.977
D)3.012
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Deck 13: Multiple Regression
1
In regression analysis, the response variable is the

A)independent variable
B)dependent variable
C)slope of the regression function
D)intercept
dependent variable
2
In order to test for the significance of a regression model involving 3 independent variables and 47 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)47 and 3
B)3 and 47
C)2 and 43
D)3 and 43
3 and 43
3
In a multiple regression analysis SSR = 1,000 and SSE = 200. The F statistic for this model is

A)5.0
B)1,200
C)800
D)Not enough information is provided to answer this question.
Not enough information is provided to answer this question.
4
A measure of goodness of fit for the estimated regression equation is the

A)multiple coefficient of determination
B)mean square due to error
C)mean square due to regression
D)sample size
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5
The multiple coefficient of determination is

A)MSR/MST
B)MSR/MSE
C)SSR/SST
D)SSE/SSR
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6
A multiple regression model has

A)only one independent variable
B)more than one dependent variable
C)more than one independent variable
D)at least 2 dependent variables
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7
As the goodness of fit for the estimated multiple regression equation increases,

A)the value of the adjusted multiple coefficient of determination decreases
B)the value of the regression equation's constant b0 decreases
C)the value of the multiple coefficient of determination increases
D)the value of the correlation coefficient increases
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8
In regression analysis, an outlier is an observation whose

A)mean is larger than the standard deviation
B)residual is zero
C)mean is zero
D)residual is much larger than the rest of the residual values
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9
A regression model involved 5 independent variables and 126 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)131 degrees of freedom
B)125 degrees of freedom
C)130 degrees of freedom
D)4 degrees of freedom
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10
A multiple regression model has the form <strong>A multiple regression model has the form   = 7 + 2 x<sub>1</sub> + 9 x<sub>2</sub> As x<sub>1</sub> increases by 1 unit (holding x<sub>2</sub> constant),   is expected to</strong> A)increase by 9 units B)decrease by 9 units C)increase by 2 units D)decrease by 2 units = 7 + 2 x1 + 9 x2 As x1 increases by 1 unit (holding x2 constant), <strong>A multiple regression model has the form   = 7 + 2 x<sub>1</sub> + 9 x<sub>2</sub> As x<sub>1</sub> increases by 1 unit (holding x<sub>2</sub> constant),   is expected to</strong> A)increase by 9 units B)decrease by 9 units C)increase by 2 units D)decrease by 2 units is expected to

A)increase by 9 units
B)decrease by 9 units
C)increase by 2 units
D)decrease by 2 units
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11
If a qualitative variable has k levels, the number of dummy variables required is

A)k - 1
B)k
C)k + 1
D)2k
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12
In a multiple regression model, the error term ε\varepsilon is assumed to be a random variable with a mean of

A)zero
B)-1
C)1
D)any value
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13
A variable that cannot be measured in terms of how much or how many but instead is assigned values to represent categories is called

A)an interaction
B)a constant variable
C)a category variable
D)a qualitative variable
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14
A variable that takes on the values of 0 or 1 and is used to incorporate the effect of qualitative variables in a regression model is called

A)an interaction
B)a constant variable
C)a dummy variable
D)None of these alternatives is correct.
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15
The numerical value of the coefficient of determination

A)is always larger than the coefficient of correlation
B)is always smaller than the coefficient of correlation
C)is negative if the coefficient of determination is negative
D)can be larger or smaller than the coefficient of correlation
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16
The correct relationship between SST, SSR, and SSE is given by

A)SSR = SST + SSE
B)SSR = SST - SSE
C)SSE = SSR - SST
D)None of these alternatives is correct.
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17
For a multiple regression model, SSR = 600 and SSE = 200. The multiple coefficient of determination is

A)0.333
B)0.275
C)0.300
D)0.75
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18
In a multiple regression model, the variance of the error term ε\varepsilon is assumed to be

A)the same for all values of the dependent variable
B)zero
C)the same for all values of the independent variable
D)-1
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19
The ratio of MSE/MSR yields

A)SST
B)the F statistic
C)SSR
D)None of these alternatives is correct.
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20
In a multiple regression analysis involving 15 independent variables and 200 observations, SST = 800 and SSE = 240. The coefficient of determination is

A)0.300
B)0.192
C)0.500
D)0.700
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21
A term used to describe the case when the independent variables in a multiple regression model are correlated is

A)regression
B)correlation
C)multicollinearity
D)None of the alternative answers are correct.
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22
In a residual plot that does not suggest we should challenge the assumptions of our regression model, we would expect to see

A)a horizontal band of points centered near zero
B)a widening band of points
C)a band of points having a slope consistent with that of the regression equation
D)a parabolic band of points
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23
In a multiple regression model, the error term ε\varepsilon is assumed to

A)have a mean of 1
B)have a variance of zero
C)have a standard deviation of 1
D)be normally distributed
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24
In order to test for the significance of a regression model involving 14 independent variables and 255 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)14 and 255
B)255 and 14
C)13 and 240
D)14 and 240
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25
In multiple regression analysis, the correlation among the independent variables is termed

A)homoscedasticity
B)linearity
C)multicollinearity
D)adjusted coefficient of determination
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26
In multiple regression analysis,

A)there can be any number of dependent variables but only one independent variable
B)there must be only one independent variable
C)the coefficient of determination must be larger than 1
D)there can be several independent variables, but only one dependent variable
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27
A regression model in which more than one independent variable is used to predict the dependent variable is called

A)a simple linear regression model
B)a multiple regression model
C)an independent model
D)None of these alternatives is correct.
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28
A multiple regression model has the form <strong>A multiple regression model has the form   = 5 + 6x + 7w As x increases by 1 unit (holding w constant), y is expected to</strong> A)increase by 11 units B)decrease by 11 units C)increase by 6 units D)decrease by 6 units = 5 + 6x + 7w As x increases by 1 unit (holding w constant), y is expected to

A)increase by 11 units
B)decrease by 11 units
C)increase by 6 units
D)decrease by 6 units
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29
In a multiple regression model, the values of the error term , ε\varepsilon , are assumed to be

A)zero
B)dependent on each other
C)independent of each other
D)always negative
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30
A regression model involved 18 independent variables and 200 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)18 degrees of freedom
B)200 degrees of freedom
C)199 degrees of freedom
D)181 degrees of freedom
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31
In order to test for the significance of a regression model involving 4 independent variables and 36 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)4 and 36
B)3 and 35
C)4 and 31
D)4 and 32
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32
In order to test for the significance of a regression model involving 8 independent variables and 121 observations, the numerator and denominator degrees of freedom (respectively) for the critical value of F are

A)8 and 121
B)7 and 120
C)8 and 112
D)7 and 112
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33
In a multiple regression analysis involving 12 independent variables and 166 observations, SSR = 878 and SSE = 122. The coefficient of determination is

A)0.1389
B)0.1220
C)0.878
D)0.7317
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34
A variable that cannot be measured in numerical terms is called

A)a nonmeasurable random variable
B)a constant variable
C)a dependent variable
D)a qualitative variable
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35
A regression analysis involved 6 independent variables and 27 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)27 degrees of freedom
B)26 degrees of freedom
C)21 degrees of freedom
D)20 degrees of freedom
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36
A regression analysis involved 17 independent variables and 697 observations. The critical value of t for testing the significance of each of the independent variable's coefficients will have

A)696 degrees of freedom
B)16 degrees of freedom
C)713 degrees of freedom
D)714 degrees of freedom
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37
The adjusted multiple coefficient of determination is adjusted for

A)the number of dependent variables
B)the number of independent variables
C)the number of equations
D)detrimental situations
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38
In a multiple regression analysis involving 5 independent variables and 30 observations, SSR = 360 and SSE = 40. The coefficient of determination is

A)0.80
B)0.90
C)0.25
D)0.15
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39
For a multiple regression model, SST = 200 and SSE = 50. The multiple coefficient of determination is

A)0.25
B)4.00
C)250
D)0.75
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40
In a multiple regression analysis involving 10 independent variables and 81 observations, SST = 120 and SSE = 42. The coefficient of determination is

A)0.81
B)0.11
C)0.35
D)0.65
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41
A dummy variable may take

A)only the value 0 or 1
B)only the value -1 or 1
C)only non-negative values
D)any value between 0 and 1
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42
Exhibit 13-1
In a regression model involving 44 observations, the following estimated regression equation was obtained. <strong>Exhibit 13-1 In a regression model involving 44 observations, the following estimated regression equation was obtained.   = 29 + 18x<sub>1</sub> +43x<sub>2</sub> + 87x<sub>3</sub> For this model SSR = 600 and SSE = 400. Refer to Exhibit 13-1. MSR for this model is</strong> A)200 B)10 C)1,000 D)43 = 29 + 18x1 +43x2 + 87x3
For this model SSR = 600 and SSE = 400.
Refer to Exhibit 13-1. MSR for this model is

A)200
B)10
C)1,000
D)43
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43
Exhibit 13-1
In a regression model involving 44 observations, the following estimated regression equation was obtained. <strong>Exhibit 13-1 In a regression model involving 44 observations, the following estimated regression equation was obtained.   = 29 + 18x<sub>1</sub> +43x<sub>2</sub> + 87x<sub>3</sub> For this model SSR = 600 and SSE = 400. Refer to Exhibit 13-1. The computed F statistics for testing the significance of the above model is</strong> A)1.500 B)20.00 C)0.600 D)0.6667 = 29 + 18x1 +43x2 + 87x3
For this model SSR = 600 and SSE = 400.
Refer to Exhibit 13-1. The computed F statistics for testing the significance of the above model is

A)1.500
B)20.00
C)0.600
D)0.6667
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44
Exhibit 13-4
a.
y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
b.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
c. <strong>Exhibit 13-4 a. y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  b. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> c. = b<sub>o</sub> + b<sub>1</sub> x<sub>1</sub> + b<sub>2</sub> x<sub>2</sub> d. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub>  -Refer to Exhibit 13-4. Which equation gives the estimated regression line?</strong> A)equation a B)equation b C)equation c D)equation d  = bo + b1 x1 + b2 x2
d.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2

-Refer to Exhibit 13-4. Which equation gives the estimated regression line?

A)equation a
B)equation b
C)equation c
D)equation d
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45
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. The multiple coefficient of determination for this problem is</strong> A)0.4368 B)0.6960 C)0.3040 D)0.2289 = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. The multiple coefficient of determination for this problem is

A)0.4368
B)0.6960
C)0.3040
D)0.2289
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46
Exhibit 13-4
a.
y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
b.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
c. <strong>Exhibit 13-4 a. y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  b. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> c. = b<sub>o</sub> + b<sub>1</sub> x<sub>1</sub> + b<sub>2</sub> x<sub>2</sub> d. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub>  -Refer to Exhibit 13-4. Which equation describes the multiple regression equation?</strong> A)equation a B)equation b C)equation c D)equation d  = bo + b1 x1 + b2 x2
d.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2

-Refer to Exhibit 13-4. Which equation describes the multiple regression equation?

A)equation a
B)equation b
C)equation c
D)equation d
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47
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The conclusion is that the</strong> A)model is not significant B)model is significant C)slope of x<sub>1</sub> is significant D)slope of x<sub>2</sub> is significant = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The conclusion is that the

A)model is not significant
B)model is significant
C)slope of x1 is significant
D)slope of x2 is significant
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48
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. If SSR = 600 and SSE = 300, the test statistic F is</strong> A)2.33 B)0.70 C)17.5 D)1.75 = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. If SSR = 600 and SSE = 300, the test statistic F is

A)2.33
B)0.70
C)17.5
D)1.75
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49
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. The coefficient of the unit price indicates that if the unit price is</strong> A)increased by $1 (holding advertising constant), sales are expected to increase by $3 B)decreased by $1 (holding advertising constant), sales are expected to decrease by $3 C)increased by $1 (holding advertising constant), sales are expected to increase by $4,000 D)increased by $1 (holding advertising constant), sales are expected to decrease by $3,000 = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. The coefficient of the unit price indicates that if the unit price is

A)increased by $1 (holding advertising constant), sales are expected to increase by $3
B)decreased by $1 (holding advertising constant), sales are expected to decrease by $3
C)increased by $1 (holding advertising constant), sales are expected to increase by $4,000
D)increased by $1 (holding advertising constant), sales are expected to decrease by $3,000
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50
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. If we want to test for the significance of the regression model, the critical value of F at 95% confidence is</strong> A)3.68 B)3.29 C)3.24 D)4.54 = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. If we want to test for the significance of the regression model, the critical value of F at 95% confidence is

A)3.68
B)3.29
C)3.24
D)4.54
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51
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
 <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> C) = 145.321 + 25.625x<sub>1</sub> - 5.720x<sub>2</sub> + 0.823x<sub>3</sub> D) = 48.682 + 9.15x<sub>1</sub> + 3.575x<sub>2</sub> + 0.183x<sub>3</sub>

-Refer to Exhibit 13-5. The estimated regression equation is

A)y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + β\beta 3x3 + ε\varepsilon
B)E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2 + β\beta 3x3
C) <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \beta <sub>3</sub>x<sub>3</sub> C) = 145.321 + 25.625x<sub>1</sub> - 5.720x<sub>2</sub> + 0.823x<sub>3</sub> D) = 48.682 + 9.15x<sub>1</sub> + 3.575x<sub>2</sub> + 0.183x<sub>3</sub>  = 145.321 + 25.625x1 - 5.720x2 + 0.823x3
D)11ec9ead_435e_cdb6_877e_c7e2c94bd808_TB2074_11= 48.682 + 9.15x1 + 3.575x2 + 0.183x3
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52
Exhibit 13-2
A regression model between sales (y in $1,000), unit price (x1 in dollars) and television advertisement (x2 in dollars) resulted in the following function: <strong>Exhibit 13-2 A regression model between sales (y in $1,000), unit price (x<sub>1</sub> in dollars) and television advertisement (x<sub>2</sub> in dollars) resulted in the following function:   = 7 - 3x<sub>1</sub> + 5x<sub>2</sub> For this model SSR = 3500, SSE = 1500, and the sample size is 18. Refer to Exhibit 13-2. The coefficient of x<sub>2</sub> indicates that if television advertising is increased by $1 (holding the unit price constant), sales are expected to</strong> A)increase by $5 B)increase by $12,000 C)increase by $5,000 D)decrease by $2,000 = 7 - 3x1 + 5x2
For this model SSR = 3500, SSE = 1500, and the sample size is 18.
Refer to Exhibit 13-2. The coefficient of x2 indicates that if television advertising is increased by $1 (holding the unit price constant), sales are expected to

A)increase by $5
B)increase by $12,000
C)increase by $5,000
D)decrease by $2,000
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53
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The computed F statistic for testing the significance of the above model is</strong> A)43.75 B)0.875 C)50.19 D)7.00 = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The computed F statistic for testing the significance of the above model is

A)43.75
B)0.875
C)50.19
D)7.00
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54
The difference between the observed value of the dependent variable and the value predicted by using the estimated regression equation is the

A)standard error
B)residual
C)predicted interval
D)variance
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55
Exhibit 13-4
a.
y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
b.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
c. <strong>Exhibit 13-4 a. y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  b. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> c. = b<sub>o</sub> + b<sub>1</sub> x<sub>1</sub> + b<sub>2</sub> x<sub>2</sub> d. E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub>  -Refer to Exhibit 13-4. Which equation describes the multiple regression model?</strong> A)equation a B)equation b C)equation c D)equation d  = bo + b1 x1 + b2 x2
d.
E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2

-Refer to Exhibit 13-4. Which equation describes the multiple regression model?

A)equation a
B)equation b
C)equation c
D)equation d
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56
Unlike a simple linear regression model, a multiple regression model has more than one

A)intercept
B)dependent variable
C)independent variable
D)error term
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57
The mathematical equation that explains how the dependent variable y is related to several independent variables x1, x2, ..., xp and the error term ε\varepsilon is

A)a simple nonlinear regression model
B)a multiple regression model
C)an estimated multiple regression equation
D)a multiple regression equation
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58
Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The coefficient of determination for the above model is approximately</strong> A)-0.875 B)0.875 C)0.125 D)0.144 = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The coefficient of determination for the above model is approximately

A)-0.875
B)0.875
C)0.125
D)0.144
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59
Exhibit 13-1
In a regression model involving 44 observations, the following estimated regression equation was obtained. <strong>Exhibit 13-1 In a regression model involving 44 observations, the following estimated regression equation was obtained.   = 29 + 18x<sub>1</sub> +43x<sub>2</sub> + 87x<sub>3</sub> For this model SSR = 600 and SSE = 400. Refer to Exhibit 13-1. The coefficient of determination for the above model is</strong> A)0.667 B)0.600 C)0.336 D)0.400 = 29 + 18x1 +43x2 + 87x3
For this model SSR = 600 and SSE = 400.
Refer to Exhibit 13-1. The coefficient of determination for the above model is

A)0.667
B)0.600
C)0.336
D)0.400
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Exhibit 13-3
In a regression model involving 30 observations, the following estimated regression equation was obtained: <strong>Exhibit 13-3 In a regression model involving 30 observations, the following estimated regression equation was obtained:   = 17 + 4x<sub>1</sub> - 3x<sub>2</sub> + 8x<sub>3</sub> + 8x<sub>4</sub> For this model SSR = 700 and SSE = 100. Refer to Exhibit 13-3. The critical F value at 95% confidence is</strong> A)2.53 B)2.69 C)2.76 D)2.99 = 17 + 4x1 - 3x2 + 8x3 + 8x4
For this model SSR = 700 and SSE = 100.
Refer to Exhibit 13-3. The critical F value at 95% confidence is

A)2.53
B)2.69
C)2.76
D)2.99
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61
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The degrees of freedom for the sum of squares explained by the regression (SSR) are</strong> A)2 B)3 C)13 D)15
Refer to Exhibit 13-6. The degrees of freedom for the sum of squares explained by the regression (SSR) are

A)2
B)3
C)13
D)15
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62
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
 <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. We want to test whether the parameter  \beta <sub>1</sub> is significant. The test statistic equals</strong> A)-1.4 B)1.4 C)3.6 D)5

-Refer to Exhibit 13-6. We want to test whether the parameter β\beta 1 is significant. The test statistic equals

A)-1.4
B)1.4
C)3.6
D)5
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63
Exhibit 13-7
A regression model involving 4 independent variables and a sample of 15 periods resulted in the following sum of squares.
SSR = 165
SSE = 60
Refer to Exhibit 13-7. The test statistic from the information provided is

A)2.110
B)3.480
C)4.710
D)6.875
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64
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
<strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.   Refer to Exhibit 13-5. The t value obtained from the table to test an individual parameter at the 5% level is</strong> A)2.06 B)2.069 C)2.074 D)2.080
Refer to Exhibit 13-5. The t value obtained from the table to test an individual parameter at the 5% level is

A)2.06
B)2.069
C)2.074
D)2.080
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65
Exhibit 13-8
The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x1) and their gender (x2) (0 if male and 1 if female). <strong>Exhibit 13-8 The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x<sub>1</sub>) and their gender (x<sub>2</sub>) (0 if male and 1 if female).   = 30 + 0.7x<sub>1</sub> + 3x<sub>2</sub> Also provided are SST = 1,200 and SSE = 384. Refer to Exhibit 13-8. From the above function, it can be said that the expected yearly income of</strong> A)males is $3 more than females B)females is $3 more than males C)males is $3,000 more than females D)females is $3,000 more than males = 30 + 0.7x1 + 3x2
Also provided are SST = 1,200 and SSE = 384.
Refer to Exhibit 13-8. From the above function, it can be said that the expected yearly income of

A)males is $3 more than females
B)females is $3 more than males
C)males is $3,000 more than females
D)females is $3,000 more than males
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66
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. Carry out the test to determine if there is a relationship among the variables at the 5% level. The null hypothesis should</strong> A)be rejected B)not be rejected C)revised D)None of these alternatives is correct.
Refer to Exhibit 13-6. Carry out the test to determine if there is a relationship among the variables at the 5% level. The null hypothesis should

A)be rejected
B)not be rejected
C)revised
D)None of these alternatives is correct.
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67
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The interpretation of the coefficient of x<sub>1</sub> is that</strong> A)a one unit change in x<sub>1</sub> will lead to a 3.682 unit decrease in y B)a one unit increase in x<sub>1</sub> will lead to a 3.682 unit decrease in y when all other variables are held constant C)a one unit increase in x<sub>1</sub> will lead to a 3.682 unit decrease in x<sub>2</sub> when all other variables are held constant D)It is impossible to interpret the coefficient.
Refer to Exhibit 13-6. The interpretation of the coefficient of x1 is that

A)a one unit change in x1 will lead to a 3.682 unit decrease in y
B)a one unit increase in x1 will lead to a 3.682 unit decrease in y when all other variables are held constant
C)a one unit increase in x1 will lead to a 3.682 unit decrease in x2 when all other variables are held constant
D)It is impossible to interpret the coefficient.
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68
Exhibit 13-7
A regression model involving 4 independent variables and a sample of 15 periods resulted in the following sum of squares.
SSR = 165
SSE = 60
Refer to Exhibit 13-7. The coefficient of determination is

A)0.3636
B)0.7333
C)0.275
D)0.5
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69
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The test statistic used to determine if there is a relationship among the variables equals</strong> A)-1.4 B)0.2 C)0.77 D)5
Refer to Exhibit 13-6. The test statistic used to determine if there is a relationship among the variables equals

A)-1.4
B)0.2
C)0.77
D)5
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70
Exhibit 13-8
The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x1) and their gender (x2) (0 if male and 1 if female). <strong>Exhibit 13-8 The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x<sub>1</sub>) and their gender (x<sub>2</sub>) (0 if male and 1 if female).   = 30 + 0.7x<sub>1</sub> + 3x<sub>2</sub> Also provided are SST = 1,200 and SSE = 384. Refer to Exhibit 13-8. The yearly income of a 24-year-old male individual is</strong> A)$13.80 B)$13,800 C)$46,800 D)$49,800 = 30 + 0.7x1 + 3x2
Also provided are SST = 1,200 and SSE = 384.
Refer to Exhibit 13-8. The yearly income of a 24-year-old male individual is

A)$13.80
B)$13,800
C)$46,800
D)$49,800
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71
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The sum of squares due to error (SSE) equals</strong> A)37.33 B)485.3 C)4,853 D)6,308.9
Refer to Exhibit 13-6. The sum of squares due to error (SSE) equals

A)37.33
B)485.3
C)4,853
D)6,308.9
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72
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
 <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. Carry out the test of significance for the parameter  \beta <sub>1</sub> at the 5% level. The null hypothesis should be</strong> A)rejected B)not rejected C)revised D)None of these alternatives is correct.

-Refer to Exhibit 13-5. Carry out the test of significance for the parameter β\beta 1 at the 5% level. The null hypothesis should be

A)rejected
B)not rejected
C)revised
D)None of these alternatives is correct.
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73
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The F value obtained from the table used to test if there is a relationship among the variables at the 5% level equals</strong> A)3.41 B)3.63 C)3.81 D)19.41
Refer to Exhibit 13-6. The F value obtained from the table used to test if there is a relationship among the variables at the 5% level equals

A)3.41
B)3.63
C)3.81
D)19.41
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74
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
 <strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.    -Refer to Exhibit 13-5. We want to test whether the parameter  \beta <sub>1</sub> is significant. The test statistic equals</strong> A)0.357 B)2.8 C)14 D)1.96

-Refer to Exhibit 13-5. We want to test whether the parameter β\beta 1 is significant. The test statistic equals

A)0.357
B)2.8
C)14
D)1.96
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75
Exhibit 13-7
A regression model involving 4 independent variables and a sample of 15 periods resulted in the following sum of squares.
SSR = 165
SSE = 60
Refer to Exhibit 13-7. If we want to test for the significance of the model at 95% confidence, the critical F value (from the table) is

A)3.06
B)3.48
C)3.34
D)3.11
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76
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
 <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> C) = 12.924 - 3.682 x<sub>1</sub> + 45.216 x<sub>2</sub> D) = 4.425 + 2.63 x<sub>1</sub> + 12.56 x<sub>2</sub>

-Refer to Exhibit 13-6. The estimated regression equation is

A)y = β\beta 0 + β\beta 1x1 + β\beta 2x2 + ε\varepsilon
B)E(y) = β\beta 0 + β\beta 1x1 + β\beta 2x2
C) <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. The estimated regression equation is</strong> A)y =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> +  \varepsilon  B)E(y) =  \beta <sub>0</sub> +  \beta <sub>1</sub>x<sub>1</sub> +  \beta <sub>2</sub>x<sub>2</sub> C) = 12.924 - 3.682 x<sub>1</sub> + 45.216 x<sub>2</sub> D) = 4.425 + 2.63 x<sub>1</sub> + 12.56 x<sub>2</sub>  = 12.924 - 3.682 x1 + 45.216 x2
D)11ec9ead_435e_cdb6_877e_c7e2c94bd808_TB2074_11= 4.425 + 2.63 x1 + 12.56 x2
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77
Exhibit 13-5
Below you are given a partial Excel output based on a sample of 25 observations.
<strong>Exhibit 13-5 Below you are given a partial Excel output based on a sample of 25 observations.   Refer to Exhibit 13-5. The interpretation of the coefficient on x<sub>1</sub> is that</strong> A)a one unit change in x<sub>1</sub> will lead to a 25.625 unit change in y B)a one unit change in x<sub>1</sub> will lead to a 25.625 unit increase in y when all other variables are held constant C)a one unit change in x<sub>1</sub> will lead to a 25.625 unit increase in x<sub>2</sub> when all other variables are held constant D)It is impossible to interpret the coefficient.
Refer to Exhibit 13-5. The interpretation of the coefficient on x1 is that

A)a one unit change in x1 will lead to a 25.625 unit change in y
B)a one unit change in x1 will lead to a 25.625 unit increase in y when all other variables are held constant
C)a one unit change in x1 will lead to a 25.625 unit increase in x2 when all other variables are held constant
D)It is impossible to interpret the coefficient.
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78
Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
 <strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.    -Refer to Exhibit 13-6. Carry out the test of significance for the parameter  \beta <sub>1</sub> at the 1% level. The null hypothesis should be</strong> A)rejected B)not rejected C)revised D)None of these alternatives is correct.

-Refer to Exhibit 13-6. Carry out the test of significance for the parameter β\beta 1 at the 1% level. The null hypothesis should be

A)rejected
B)not rejected
C)revised
D)None of these alternatives is correct.
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Exhibit 13-8
The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x1) and their gender (x2) (0 if male and 1 if female). <strong>Exhibit 13-8 The following estimated regression model was developed relating yearly income (y in $1,000s) of 30 individuals with their age (x<sub>1</sub>) and their gender (x<sub>2</sub>) (0 if male and 1 if female).   = 30 + 0.7x<sub>1</sub> + 3x<sub>2</sub> Also provided are SST = 1,200 and SSE = 384. Refer to Exhibit 13-8. The yearly income of a 24-year-old female individual is</strong> A)$19.80 B)$19,800 C)$49.80 D)$49,800 = 30 + 0.7x1 + 3x2
Also provided are SST = 1,200 and SSE = 384.
Refer to Exhibit 13-8. The yearly income of a 24-year-old female individual is

A)$19.80
B)$19,800
C)$49.80
D)$49,800
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Exhibit 13-6
Below you are given a partial Excel output based on a sample of 16 observations.
<strong>Exhibit 13-6 Below you are given a partial Excel output based on a sample of 16 observations.   Refer to Exhibit 13-6. The t value obtained from the table which is used to test an individual parameter at the 1% level is</strong> A)2.65 B)2.921 C)2.977 D)3.012
Refer to Exhibit 13-6. The t value obtained from the table which is used to test an individual parameter at the 1% level is

A)2.65
B)2.921
C)2.977
D)3.012
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