Deck 10: Regression Analysis: Estimating Relationships

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Question
A scatterplot that appears as a shapeless mass of data points indicates:

A)a curved relationship among the variables
B)a linear relationship among the variables
C)a nonlinear relationship among the variables
D)no relationship among the variables
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Question
Regression analysis asks:

A)if there are differences between distinct populations
B)if the sample is representative of the population
C)how a single variable depends on other relevant variables
D)how several variables depend on each other
Question
The weakness of scatterplots is that they:

A)do not help identify linear relationships
B)can be misleading about the types of relationships they indicate
C)only help identify outliers
D)do not actually quantify the relationships between variables
Question
The term autocorrelation refers to:

A)the analyzed data refers to itself
B)the sample is related too closely to the population
C)the data are in a loop (values repeat themselves)
D)time series variables are usually related to their own past values
Question
A "fan" shape in a scatterplot indicates:

A)unequal variance
B)a nonlinear relationship
C)the absence of outliers
D)sampling error
Question
The covariance is not used as much as the correlation because

A)is not always a valid predictor of linear relationships
B)it is difficult to calculate
C)it is difficult to interpret
D)all of these options
Question
A correlation value of zero indicates.

A)a strong linear relationship
B)a weak linear relationship
C)no linear relationship
D)a perfect linear relationship
Question
Correlation is a summary measure that indicates:

A)a curved relationship among the variables
B)the rate of change in Y for a one unit change in X
C)the strength of the linear relationship between pairs of variables
D)the magnitude of difference between two variables
Question
In regression analysis,the variables used to help explain or predict the response variable are called the

A)independent variables
B)dependent variables
C)regression variables
D)statistical variables
Question
Data collected from approximately the same period of time from a cross-section of a population are called:

A)time series data
B)linear data
C)cross-sectional data
D)historical data
Question
Outliers are observations that

A)lie outside the sample
B)render the study useless
C)lie outside the typical pattern of points on a scatterplot
D)disrupt the entire linear trend
Question
is/are especially helpful in identifying outliers.

A)Linear regression
B)Regression analysis
C)Normal curves
D)Scatterplots
E)Multiple regression
Question
A single variable X can explain a large percentage of the variation in some other variable Y when the two variables are:

A)mutually exclusive
B)inversely related
C)directly related
D)highly correlated
E)None of the above
Question
In regression analysis,the variable we are trying to explain or predict is called the

A)independent variable
B)dependent variable
C)regression variable
D)statistical variable
E)residual variable
Question
In linear regression,we fit the least squares line to a set of values (or points on a scatterplot).The distance from the line to a point is called the:

A)fitted value
B)residual
C)correlation
D)covariance
E)None of these options
Question
In linear regression,the fitted value is the:

A)predicted value of the dependent variable
B)predicted value of the independent value
C)predicted value of the slope
D)predicted value of the intercept
E)None of these options
Question
In regression analysis,which of the following causal relationships are possible?

A)X causes Y to vary
B)Y causes X to vary
C)Other variables cause both X and Y to vary
D)All of these options
Question
In choosing the "best-fitting" line through a set of points in linear regression,we choose the one with the:

A)smallest sum of squared residuals
B)largest sum of squared residuals
C)smallest number of outliers
D)largest number of points on the line
E)None of these options
Question
The correlation value ranges from

A)0 to +1
B)-1 to +1
C)-2 to +2
D)-¥ to+ ¥
Question
In regression analysis,if there are several explanatory variables,it is called:

A)simple regression
B)multiple regression
C)compound regression
D)composite regression
Question
The multiple standard error of estimate will be:

A)0.901
B)0.888
C)0.800
D)0.953
E)0.894
Question
Regression analysis can be applied equally well to cross-sectional and time series data.
Question
The percentage of variation (R2)ranges from

A)0 to +1
B)-1 to +1
C)-2 to +2
D)-1 to 0
Question
Given the least squares regression line, <strong>Given the least squares regression line,  </strong> A)the relationship between X and Y is positive B)the relationship between X and Y is negative C)as X increases,so does Y D)as X decreases,so does Y E)there is no relationship between X and Y <div style=padding-top: 35px>

A)the relationship between X and Y is positive
B)the relationship between X and Y is negative
C)as X increases,so does Y
D)as X decreases,so does Y
E)there is no relationship between X and Y
Question
The standard error of the estimate ( <strong>The standard error of the estimate (   )is essentially the</strong> A)mean of the residuals B)standard deviation of the residuals C)mean of the explanatory variable D)standard deviation of the explanatory variable <div style=padding-top: 35px> )is essentially the

A)mean of the residuals
B)standard deviation of the residuals
C)mean of the explanatory variable
D)standard deviation of the explanatory variable
Question
Which of the following is an example of a nonlinear regression model?

A)A quadratic regression equation
B)A logarithmic regression equation
C)Constant elasticity equation
D)The learning curve model
E)All of these options
Question
The percentage of variation ( <strong>The percentage of variation (   )can be interpreted as the fraction (or percent)of variation of the</strong> A)explanatory variable explained by the independent variable B)explanatory variable explained by the regression line C)response variable explained by the regression line D)error explained by the regression line <div style=padding-top: 35px> )can be interpreted as the fraction (or percent)of variation of the

A)explanatory variable explained by the independent variable
B)explanatory variable explained by the regression line
C)response variable explained by the regression line
D)error explained by the regression line
Question
In multiple regression,the constant <strong>In multiple regression,the constant   :</strong> A)Is the expected value of the dependent variable Y when all of the independent variables have the value zero B)Is necessary to fit the multiple regression line to set of points C)Must be adjusted for the number of independent variables D)All of these options <div style=padding-top: 35px> :

A)Is the expected value of the dependent variable Y when all of the independent variables have the value zero
B)Is necessary to fit the multiple regression line to set of points
C)Must be adjusted for the number of independent variables
D)All of these options
Question
Cross-sectional data are usually data gathered from approximately the same period of time from a cross-sectional of a population.
Question
In every regression study there is a single variable that we are trying to explain or predict.This is called the response variable or dependent variable.
Question
In multiple regression,the coefficients reflect the expected change in:

A)Y when the associated X value increases by one unit
B)X when the associated Y value increases by one unit
C)Y when the associated X value decreases by one unit
D)X when the associated Y value decreases by one unit
Question
An important condition when interpreting the coefficient for a particular independent variable X in a multiple regression equation is that:

A)the dependent variable will remain constant
B)the dependent variable will be allowed to vary
C)all of the other independent variables remain constant
D)all of the other independent variables be allowed to vary
Question
To help explain or predict the response variable in every regression study,we use one or more explanatory variables.These variables are also called response variables or independent variables.
Question
In linear regression,a dummy variable is used:

A)to represent residual variables
B)to represent missing data in each sample
C)to include hypothetical data in the regression equation
D)to include categorical variables in the regression equation
E)when "dumb" responses are included in the data
Question
Approximately what percentage of the observed Y values are within on standard error of the estimate ( <strong>Approximately what percentage of the observed Y values are within on standard error of the estimate (   )of the corresponding fitted Y values?</strong> A)67% B)95% C)99% D)It is not possible to say <div style=padding-top: 35px> )of the corresponding fitted Y values?

A)67%
B)95%
C)99%
D)It is not possible to say
Question
The adjusted R2 adjusts R2 for:

A)non-linearity
B)outliers
C)low correlation
D)the number of explanatory variables in a multiple regression model
Question
In a simple linear regression analysis,the following sums of squares are produced: <strong>In a simple linear regression analysis,the following sums of squares are produced:   The proportion of the variation in Y that is explained by the variation in X is:</strong> A)20% B)80% C)25% D)50% E)None of the above <div style=padding-top: 35px> The proportion of the variation in Y that is explained by the variation in X is:

A)20%
B)80%
C)25%
D)50%
E)None of the above
Question
The regression line <strong>The regression line   has been fitted to the data points (28,60),(20,50),(10,18),and (25,55).The sum of the squared residuals will be:</strong> A)20.25 B)16.00 C)49.00 D)94.25 <div style=padding-top: 35px> has been fitted to the data points (28,60),(20,50),(10,18),and (25,55).The sum of the squared residuals will be:

A)20.25
B)16.00
C)49.00
D)94.25
Question
In linear regression,we can have an interaction variable.Algebraically,the interaction variable is the other variables in the regression equation.

A)sum
B)ratio
C)product
D)mean
Question
The two primary objectives of regression analysis are to study relationships between variables and to use those relationships to make predictions.
Question
A regression analysis between sales (in $1000)and advertising (in $)resulted in the following least squares line: A regression analysis between sales (in $1000)and advertising (in $)resulted in the following least squares line:   = 32 + 8X.This implies that an increase of $1 in advertising is expected to result in an increase of $40 in sales.<div style=padding-top: 35px> = 32 + 8X.This implies that an increase of $1 in advertising is expected to result in an increase of $40 in sales.
Question
In a simple regression analysis,if the standard error of estimate In a simple regression analysis,if the standard error of estimate   = 15 and the number of observations n = 10,then the sum of the residuals squared must be 120.<div style=padding-top: 35px> = 15 and the number of observations n = 10,then the sum of the residuals squared must be 120.
Question
In simple linear regression,the divisor of the standard error of estimate In simple linear regression,the divisor of the standard error of estimate   is n - 1; simply because there is only one explanatory variable of interest.<div style=padding-top: 35px> is n - 1; simply because there is only one explanatory variable of interest.
Question
In a simple linear regression problem,if the percentage of variation explained In a simple linear regression problem,if the percentage of variation explained   is 0.95,this means that 95% of the variation in the explanatory variable X can be explained by regression.<div style=padding-top: 35px> is 0.95,this means that 95% of the variation in the explanatory variable X can be explained by regression.
Question
A useful graph in almost any regression analysis is a scatterplot of residuals (on the vertical axis)versus fitted values (on the horizontal axis),where a "good" fit not only has small residuals,but it has residuals scattered randomly around zero with no apparent pattern.
Question
The percentage of variation explained The percentage of variation explained   is the square of the correlation between the observed Y values and the fitted Y values.<div style=padding-top: 35px> is the square of the correlation between the observed Y values and the fitted Y values.
Question
A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line: A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line:   = 84 +7X.This implies that if advertising is $800,then the predicted amount of sales (in dollars)is $140,000.<div style=padding-top: 35px> = 84 +7X.This implies that if advertising is $800,then the predicted amount of sales (in dollars)is $140,000.
Question
The residual is defined as the difference between the actual and predicted,or fitted values of the response variable.
Question
A regression analysis between weight (Y in pounds)and height (X in inches)resulted in the following least squares line: A regression analysis between weight (Y in pounds)and height (X in inches)resulted in the following least squares line:   = 140 + 5X.This implies that if the height is increased by 1 inch,the weight is expected to increase on average by 5 pounds.<div style=padding-top: 35px> = 140 + 5X.This implies that if the height is increased by 1 inch,the weight is expected to increase on average by 5 pounds.
Question
The least squares line is the line that minimizes the sum of the residuals.
Question
Correlation is measured on a scale from 0 to 1,where 0 indicates no linear relationship between two variables,and 1 indicates a perfect linear relationship.
Question
An outlier is an observation that falls outside of the general pattern of the rest of the observations on a scatterplot.
Question
Scatterplots are used for identifying outliers and quantifying relationships between variables.
Question
Correlation is used to determine the strength of the linear relationship between an explanatory variable X and response variable Y.
Question
The regression line The regression line   = 3 + 2X has been fitted to the data points (4,14),(2,7),and (1,4).The sum of the residuals squared will be 8.0.<div style=padding-top: 35px> = 3 + 2X has been fitted to the data points (4,14),(2,7),and (1,4).The sum of the residuals squared will be 8.0.
Question
In regression analysis,we can often use the standard error of estimate In regression analysis,we can often use the standard error of estimate   to judge which of several potential regression equations is the most useful.<div style=padding-top: 35px> to judge which of several potential regression equations is the most useful.
Question
A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line: A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line:   = 84 +7X.This implies that if there is no advertising,then the predicted amount of sales (in dollars)is $84,000.<div style=padding-top: 35px> = 84 +7X.This implies that if there is no advertising,then the predicted amount of sales (in dollars)is $84,000.
Question
In reference to the equation, In reference to the equation,   ,the value 0.10 is the expected change in Y per unit change in   .<div style=padding-top: 35px> ,the value 0.10 is the expected change in Y per unit change in In reference to the equation,   ,the value 0.10 is the expected change in Y per unit change in   .<div style=padding-top: 35px> .
Question
A negative relationship between an explanatory variable X and a response variable Y means that as X increases,Y decreases,and vice versa.
Question
When the scatterplot appears as a shapeless swarm of points,this can indicate that there is no relationship between the response variable Y and the explanatory variable X,or at least none worth pursuing.
Question
We should include an interaction variable in a regression model if we believe that the effect of one explanatory variable We should include an interaction variable in a regression model if we believe that the effect of one explanatory variable   on the response variable Y depends on the value of another explanatory variable   .<div style=padding-top: 35px> on the response variable Y depends on the value of another explanatory variable We should include an interaction variable in a regression model if we believe that the effect of one explanatory variable   on the response variable Y depends on the value of another explanatory variable   .<div style=padding-top: 35px> .
Question
The primary purpose of a nonlinear transformation is to "straighten out" the data on a scatterplot
Question
If a categorical variable is to be included in a multiple regression,a dummy variable for each category of the variable should be used,but the original categorical variables should not be sued.
Question
A logarithmic transformation of the response variable Y is often useful when the distribution of Y is symmetric.
Question
In a simple regression with a single explanatory variable,the multiple R is the same as the standard correlation between the Y variable and the explanatory X variable.
Question
The coefficients for logarithmically transformed explanatory variables should be interpreted as the percent change in the dependent variable for a 1% percent change in the explanatory variable.
Question
For the multiple regression model For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units.<div style=padding-top: 35px> ,if For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units.<div style=padding-top: 35px> were to increase by 5 units,holding For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units.<div style=padding-top: 35px> and For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units.<div style=padding-top: 35px> constant,the value of Y would be expected to decrease by 50 units.
Question
In a nonlinear transformation of data,the Y variable or the X variables may be transformed,but not both.
Question
In the multiple regression model In the multiple regression model   we interpret X<sub>1</sub> as follows: holding X<sub>2</sub> constant,if X<sub>1 </sub>increases by 1 unit,then the expected value of Y will increase by 9 units.<div style=padding-top: 35px> we interpret X1 as follows: holding X2 constant,if X1 increases by 1 unit,then the expected value of Y will increase by 9 units.
Question
If a scatterplot of residuals shows a parabola shape,then a logarithmic transformation may be useful in obtaining a better fit
Question
The adjusted R2 is used primarily to monitor whether extra explanatory variables really belong in a multiple regression model
Question
In a multiple regression analysis with three explanatory variables,suppose that there are 60 observations and the sum of the residuals squared is 28.The standard error of estimate must be 0.7071.
Question
The multiple R for a regression is the correlation between the observed Y values and the fitted Y values.
.
Question
In a multiple regression problem with two explanatory variables if,the fitted regression equation is In a multiple regression problem with two explanatory variables if,the fitted regression equation is   ,then the estimated value of Y when   and   is 49.4.<div style=padding-top: 35px> ,then the estimated value of Y when In a multiple regression problem with two explanatory variables if,the fitted regression equation is   ,then the estimated value of Y when   and   is 49.4.<div style=padding-top: 35px> and In a multiple regression problem with two explanatory variables if,the fitted regression equation is   ,then the estimated value of Y when   and   is 49.4.<div style=padding-top: 35px> is 49.4.
Question
The R2 can only increase when extra explanatory variables are added to a multiple regression model
Question
An interaction variable is the product of an explanatory variable and the dependent variable.
Question
If the regression equation includes anything other than a constant plus the sum of products of constants and variables,the model will not be linear
Question
In a simple linear regression problem,suppose that In a simple linear regression problem,suppose that   = 12.48 and   = 124.8.Then the percentage of variation explained   must be 0.90.<div style=padding-top: 35px> = 12.48 and In a simple linear regression problem,suppose that   = 12.48 and   = 124.8.Then the percentage of variation explained   must be 0.90.<div style=padding-top: 35px> = 124.8.Then the percentage of variation explained In a simple linear regression problem,suppose that   = 12.48 and   = 124.8.Then the percentage of variation explained   must be 0.90.<div style=padding-top: 35px> must be 0.90.
Question
The adjusted R2 is adjusted for the number of explanatory variables in a regression equation,and it has he same interpretation as the standard R2.
Question
The effect of a logarithmic transformation on a variable that is skewed to the right by a few large values is to "squeeze" the values together and make the distribution more symmetric
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Deck 10: Regression Analysis: Estimating Relationships
1
A scatterplot that appears as a shapeless mass of data points indicates:

A)a curved relationship among the variables
B)a linear relationship among the variables
C)a nonlinear relationship among the variables
D)no relationship among the variables
D
2
Regression analysis asks:

A)if there are differences between distinct populations
B)if the sample is representative of the population
C)how a single variable depends on other relevant variables
D)how several variables depend on each other
C
3
The weakness of scatterplots is that they:

A)do not help identify linear relationships
B)can be misleading about the types of relationships they indicate
C)only help identify outliers
D)do not actually quantify the relationships between variables
D
4
The term autocorrelation refers to:

A)the analyzed data refers to itself
B)the sample is related too closely to the population
C)the data are in a loop (values repeat themselves)
D)time series variables are usually related to their own past values
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k this deck
5
A "fan" shape in a scatterplot indicates:

A)unequal variance
B)a nonlinear relationship
C)the absence of outliers
D)sampling error
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Unlock Deck
k this deck
6
The covariance is not used as much as the correlation because

A)is not always a valid predictor of linear relationships
B)it is difficult to calculate
C)it is difficult to interpret
D)all of these options
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7
A correlation value of zero indicates.

A)a strong linear relationship
B)a weak linear relationship
C)no linear relationship
D)a perfect linear relationship
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8
Correlation is a summary measure that indicates:

A)a curved relationship among the variables
B)the rate of change in Y for a one unit change in X
C)the strength of the linear relationship between pairs of variables
D)the magnitude of difference between two variables
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9
In regression analysis,the variables used to help explain or predict the response variable are called the

A)independent variables
B)dependent variables
C)regression variables
D)statistical variables
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10
Data collected from approximately the same period of time from a cross-section of a population are called:

A)time series data
B)linear data
C)cross-sectional data
D)historical data
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11
Outliers are observations that

A)lie outside the sample
B)render the study useless
C)lie outside the typical pattern of points on a scatterplot
D)disrupt the entire linear trend
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12
is/are especially helpful in identifying outliers.

A)Linear regression
B)Regression analysis
C)Normal curves
D)Scatterplots
E)Multiple regression
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13
A single variable X can explain a large percentage of the variation in some other variable Y when the two variables are:

A)mutually exclusive
B)inversely related
C)directly related
D)highly correlated
E)None of the above
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14
In regression analysis,the variable we are trying to explain or predict is called the

A)independent variable
B)dependent variable
C)regression variable
D)statistical variable
E)residual variable
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15
In linear regression,we fit the least squares line to a set of values (or points on a scatterplot).The distance from the line to a point is called the:

A)fitted value
B)residual
C)correlation
D)covariance
E)None of these options
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16
In linear regression,the fitted value is the:

A)predicted value of the dependent variable
B)predicted value of the independent value
C)predicted value of the slope
D)predicted value of the intercept
E)None of these options
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17
In regression analysis,which of the following causal relationships are possible?

A)X causes Y to vary
B)Y causes X to vary
C)Other variables cause both X and Y to vary
D)All of these options
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18
In choosing the "best-fitting" line through a set of points in linear regression,we choose the one with the:

A)smallest sum of squared residuals
B)largest sum of squared residuals
C)smallest number of outliers
D)largest number of points on the line
E)None of these options
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19
The correlation value ranges from

A)0 to +1
B)-1 to +1
C)-2 to +2
D)-¥ to+ ¥
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20
In regression analysis,if there are several explanatory variables,it is called:

A)simple regression
B)multiple regression
C)compound regression
D)composite regression
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21
The multiple standard error of estimate will be:

A)0.901
B)0.888
C)0.800
D)0.953
E)0.894
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22
Regression analysis can be applied equally well to cross-sectional and time series data.
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23
The percentage of variation (R2)ranges from

A)0 to +1
B)-1 to +1
C)-2 to +2
D)-1 to 0
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24
Given the least squares regression line, <strong>Given the least squares regression line,  </strong> A)the relationship between X and Y is positive B)the relationship between X and Y is negative C)as X increases,so does Y D)as X decreases,so does Y E)there is no relationship between X and Y

A)the relationship between X and Y is positive
B)the relationship between X and Y is negative
C)as X increases,so does Y
D)as X decreases,so does Y
E)there is no relationship between X and Y
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25
The standard error of the estimate ( <strong>The standard error of the estimate (   )is essentially the</strong> A)mean of the residuals B)standard deviation of the residuals C)mean of the explanatory variable D)standard deviation of the explanatory variable )is essentially the

A)mean of the residuals
B)standard deviation of the residuals
C)mean of the explanatory variable
D)standard deviation of the explanatory variable
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26
Which of the following is an example of a nonlinear regression model?

A)A quadratic regression equation
B)A logarithmic regression equation
C)Constant elasticity equation
D)The learning curve model
E)All of these options
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27
The percentage of variation ( <strong>The percentage of variation (   )can be interpreted as the fraction (or percent)of variation of the</strong> A)explanatory variable explained by the independent variable B)explanatory variable explained by the regression line C)response variable explained by the regression line D)error explained by the regression line )can be interpreted as the fraction (or percent)of variation of the

A)explanatory variable explained by the independent variable
B)explanatory variable explained by the regression line
C)response variable explained by the regression line
D)error explained by the regression line
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28
In multiple regression,the constant <strong>In multiple regression,the constant   :</strong> A)Is the expected value of the dependent variable Y when all of the independent variables have the value zero B)Is necessary to fit the multiple regression line to set of points C)Must be adjusted for the number of independent variables D)All of these options :

A)Is the expected value of the dependent variable Y when all of the independent variables have the value zero
B)Is necessary to fit the multiple regression line to set of points
C)Must be adjusted for the number of independent variables
D)All of these options
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29
Cross-sectional data are usually data gathered from approximately the same period of time from a cross-sectional of a population.
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30
In every regression study there is a single variable that we are trying to explain or predict.This is called the response variable or dependent variable.
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31
In multiple regression,the coefficients reflect the expected change in:

A)Y when the associated X value increases by one unit
B)X when the associated Y value increases by one unit
C)Y when the associated X value decreases by one unit
D)X when the associated Y value decreases by one unit
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32
An important condition when interpreting the coefficient for a particular independent variable X in a multiple regression equation is that:

A)the dependent variable will remain constant
B)the dependent variable will be allowed to vary
C)all of the other independent variables remain constant
D)all of the other independent variables be allowed to vary
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33
To help explain or predict the response variable in every regression study,we use one or more explanatory variables.These variables are also called response variables or independent variables.
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34
In linear regression,a dummy variable is used:

A)to represent residual variables
B)to represent missing data in each sample
C)to include hypothetical data in the regression equation
D)to include categorical variables in the regression equation
E)when "dumb" responses are included in the data
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35
Approximately what percentage of the observed Y values are within on standard error of the estimate ( <strong>Approximately what percentage of the observed Y values are within on standard error of the estimate (   )of the corresponding fitted Y values?</strong> A)67% B)95% C)99% D)It is not possible to say )of the corresponding fitted Y values?

A)67%
B)95%
C)99%
D)It is not possible to say
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36
The adjusted R2 adjusts R2 for:

A)non-linearity
B)outliers
C)low correlation
D)the number of explanatory variables in a multiple regression model
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37
In a simple linear regression analysis,the following sums of squares are produced: <strong>In a simple linear regression analysis,the following sums of squares are produced:   The proportion of the variation in Y that is explained by the variation in X is:</strong> A)20% B)80% C)25% D)50% E)None of the above The proportion of the variation in Y that is explained by the variation in X is:

A)20%
B)80%
C)25%
D)50%
E)None of the above
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38
The regression line <strong>The regression line   has been fitted to the data points (28,60),(20,50),(10,18),and (25,55).The sum of the squared residuals will be:</strong> A)20.25 B)16.00 C)49.00 D)94.25 has been fitted to the data points (28,60),(20,50),(10,18),and (25,55).The sum of the squared residuals will be:

A)20.25
B)16.00
C)49.00
D)94.25
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39
In linear regression,we can have an interaction variable.Algebraically,the interaction variable is the other variables in the regression equation.

A)sum
B)ratio
C)product
D)mean
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40
The two primary objectives of regression analysis are to study relationships between variables and to use those relationships to make predictions.
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41
A regression analysis between sales (in $1000)and advertising (in $)resulted in the following least squares line: A regression analysis between sales (in $1000)and advertising (in $)resulted in the following least squares line:   = 32 + 8X.This implies that an increase of $1 in advertising is expected to result in an increase of $40 in sales. = 32 + 8X.This implies that an increase of $1 in advertising is expected to result in an increase of $40 in sales.
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42
In a simple regression analysis,if the standard error of estimate In a simple regression analysis,if the standard error of estimate   = 15 and the number of observations n = 10,then the sum of the residuals squared must be 120. = 15 and the number of observations n = 10,then the sum of the residuals squared must be 120.
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43
In simple linear regression,the divisor of the standard error of estimate In simple linear regression,the divisor of the standard error of estimate   is n - 1; simply because there is only one explanatory variable of interest. is n - 1; simply because there is only one explanatory variable of interest.
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44
In a simple linear regression problem,if the percentage of variation explained In a simple linear regression problem,if the percentage of variation explained   is 0.95,this means that 95% of the variation in the explanatory variable X can be explained by regression. is 0.95,this means that 95% of the variation in the explanatory variable X can be explained by regression.
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45
A useful graph in almost any regression analysis is a scatterplot of residuals (on the vertical axis)versus fitted values (on the horizontal axis),where a "good" fit not only has small residuals,but it has residuals scattered randomly around zero with no apparent pattern.
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46
The percentage of variation explained The percentage of variation explained   is the square of the correlation between the observed Y values and the fitted Y values. is the square of the correlation between the observed Y values and the fitted Y values.
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47
A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line: A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line:   = 84 +7X.This implies that if advertising is $800,then the predicted amount of sales (in dollars)is $140,000. = 84 +7X.This implies that if advertising is $800,then the predicted amount of sales (in dollars)is $140,000.
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48
The residual is defined as the difference between the actual and predicted,or fitted values of the response variable.
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49
A regression analysis between weight (Y in pounds)and height (X in inches)resulted in the following least squares line: A regression analysis between weight (Y in pounds)and height (X in inches)resulted in the following least squares line:   = 140 + 5X.This implies that if the height is increased by 1 inch,the weight is expected to increase on average by 5 pounds. = 140 + 5X.This implies that if the height is increased by 1 inch,the weight is expected to increase on average by 5 pounds.
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50
The least squares line is the line that minimizes the sum of the residuals.
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51
Correlation is measured on a scale from 0 to 1,where 0 indicates no linear relationship between two variables,and 1 indicates a perfect linear relationship.
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52
An outlier is an observation that falls outside of the general pattern of the rest of the observations on a scatterplot.
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53
Scatterplots are used for identifying outliers and quantifying relationships between variables.
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54
Correlation is used to determine the strength of the linear relationship between an explanatory variable X and response variable Y.
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55
The regression line The regression line   = 3 + 2X has been fitted to the data points (4,14),(2,7),and (1,4).The sum of the residuals squared will be 8.0. = 3 + 2X has been fitted to the data points (4,14),(2,7),and (1,4).The sum of the residuals squared will be 8.0.
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56
In regression analysis,we can often use the standard error of estimate In regression analysis,we can often use the standard error of estimate   to judge which of several potential regression equations is the most useful. to judge which of several potential regression equations is the most useful.
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57
A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line: A regression analysis between sales (in $1000)and advertising (in $100)resulted in the following least squares line:   = 84 +7X.This implies that if there is no advertising,then the predicted amount of sales (in dollars)is $84,000. = 84 +7X.This implies that if there is no advertising,then the predicted amount of sales (in dollars)is $84,000.
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58
In reference to the equation, In reference to the equation,   ,the value 0.10 is the expected change in Y per unit change in   . ,the value 0.10 is the expected change in Y per unit change in In reference to the equation,   ,the value 0.10 is the expected change in Y per unit change in   . .
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59
A negative relationship between an explanatory variable X and a response variable Y means that as X increases,Y decreases,and vice versa.
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60
When the scatterplot appears as a shapeless swarm of points,this can indicate that there is no relationship between the response variable Y and the explanatory variable X,or at least none worth pursuing.
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61
We should include an interaction variable in a regression model if we believe that the effect of one explanatory variable We should include an interaction variable in a regression model if we believe that the effect of one explanatory variable   on the response variable Y depends on the value of another explanatory variable   . on the response variable Y depends on the value of another explanatory variable We should include an interaction variable in a regression model if we believe that the effect of one explanatory variable   on the response variable Y depends on the value of another explanatory variable   . .
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62
The primary purpose of a nonlinear transformation is to "straighten out" the data on a scatterplot
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63
If a categorical variable is to be included in a multiple regression,a dummy variable for each category of the variable should be used,but the original categorical variables should not be sued.
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64
A logarithmic transformation of the response variable Y is often useful when the distribution of Y is symmetric.
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65
In a simple regression with a single explanatory variable,the multiple R is the same as the standard correlation between the Y variable and the explanatory X variable.
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66
The coefficients for logarithmically transformed explanatory variables should be interpreted as the percent change in the dependent variable for a 1% percent change in the explanatory variable.
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67
For the multiple regression model For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units. ,if For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units. were to increase by 5 units,holding For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units. and For the multiple regression model   ,if   were to increase by 5 units,holding   and   constant,the value of Y would be expected to decrease by 50 units. constant,the value of Y would be expected to decrease by 50 units.
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68
In a nonlinear transformation of data,the Y variable or the X variables may be transformed,but not both.
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69
In the multiple regression model In the multiple regression model   we interpret X<sub>1</sub> as follows: holding X<sub>2</sub> constant,if X<sub>1 </sub>increases by 1 unit,then the expected value of Y will increase by 9 units. we interpret X1 as follows: holding X2 constant,if X1 increases by 1 unit,then the expected value of Y will increase by 9 units.
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70
If a scatterplot of residuals shows a parabola shape,then a logarithmic transformation may be useful in obtaining a better fit
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71
The adjusted R2 is used primarily to monitor whether extra explanatory variables really belong in a multiple regression model
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72
In a multiple regression analysis with three explanatory variables,suppose that there are 60 observations and the sum of the residuals squared is 28.The standard error of estimate must be 0.7071.
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73
The multiple R for a regression is the correlation between the observed Y values and the fitted Y values.
.
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74
In a multiple regression problem with two explanatory variables if,the fitted regression equation is In a multiple regression problem with two explanatory variables if,the fitted regression equation is   ,then the estimated value of Y when   and   is 49.4. ,then the estimated value of Y when In a multiple regression problem with two explanatory variables if,the fitted regression equation is   ,then the estimated value of Y when   and   is 49.4. and In a multiple regression problem with two explanatory variables if,the fitted regression equation is   ,then the estimated value of Y when   and   is 49.4. is 49.4.
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75
The R2 can only increase when extra explanatory variables are added to a multiple regression model
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76
An interaction variable is the product of an explanatory variable and the dependent variable.
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77
If the regression equation includes anything other than a constant plus the sum of products of constants and variables,the model will not be linear
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78
In a simple linear regression problem,suppose that In a simple linear regression problem,suppose that   = 12.48 and   = 124.8.Then the percentage of variation explained   must be 0.90. = 12.48 and In a simple linear regression problem,suppose that   = 12.48 and   = 124.8.Then the percentage of variation explained   must be 0.90. = 124.8.Then the percentage of variation explained In a simple linear regression problem,suppose that   = 12.48 and   = 124.8.Then the percentage of variation explained   must be 0.90. must be 0.90.
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79
The adjusted R2 is adjusted for the number of explanatory variables in a regression equation,and it has he same interpretation as the standard R2.
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80
The effect of a logarithmic transformation on a variable that is skewed to the right by a few large values is to "squeeze" the values together and make the distribution more symmetric
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