Deck 13: Multiple Regression
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Deck 13: Multiple Regression
1
If R2 and R2adj differ greatly, we should probably add a few predictors to improve the fit.
False
2
A common misinterpretation of the principle of Occam's Razor is that a simple regression model (rather than a multiple regression model) is always best.
True
3
A parsimonious model is one with many weak predictors but a few strong ones.
False
4
For a certain firm, the regression equation Bonus = 2,000 + 257 Experience + 0.046 Salary describes employee bonuses with a standard error of 125. John has 10 years' experience, earns $50,000, and earned a bonus of $7,000. John is an outlier.
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5
Evans' Rule says that if n = 50 you need at least 5 predictors to have a good model.
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6
A predictor whose pairwise correlation with Y is near zero can still have a significant t-value in a multiple regression when other predictors are included.
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7
The model Y = β0 + β1X + β2X2 cannot be estimated by Excel because of the nonlinear term.
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8
If a regression model's F test statistic is Fcalc = 43.82, we could say that the explained variance is approximately 44 percent.
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9
In a multiple regression with 3 predictors in a sample of 25 U.S. cities, we would use F3,21 in a test of overall significance.
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10
A negative estimated coefficient in a regression usually indicates a weak predictor.
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11
The random error term in a regression model reflects all factors omitted from the model.
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12
The effect of a binary predictor is to shift the regression intercept.
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13
If the probability plot of residuals resembles a straight line, the residuals show a fairly good fit to the normal distribution.
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14
R2adj can exceed R2 if there are several weak predictors.
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15
A binary (categorical) predictor should not be used along with nonbinary (numerical) predictors.
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16
The F statistic in a multiple regression is significant if at least one of the predictors has a significant t statistic at a given α.
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17
There is one residual for each predictor in the regression model.
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18
Confidence intervals for Y may be unreliable when the residuals are not normally distributed.
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19
In a regression, the model with the best fit is preferred over all other models.
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20
In regression the dependent variable is referred to as the response variable.
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21
Plotting the residuals against a binary predictor (X = 0, 1) reveals nothing about heteroscedasticity.
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22
If the residuals in your regression are non-normal, a larger sample size might help improve the reliability of confidence intervals for Y.
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23
A disadvantage of Excel's Data Analysis regression tool is that it expects the independent variables to be in a block of contiguous columns, so you must delete a column if you want to eliminate a predictor from the model.
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24
Multicollinearity can be detected from t tests of the predictor variables.
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25
The regression equation Bonus = 2,812 + 27 Experience + 0.046 Salary says that Experience is the most significant predictor of Bonus.
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26
When autocorrelation is present, the estimates of the coefficients will be unbiased.
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27
Non-normality of the residuals from a regression can best be detected by looking at the residual plots against the fitted Y values.
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28
The F statistic and its p-value give a global test of significance for a multiple regression.
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29
A disadvantage of Excel's regression is that it does not give as much accuracy in the estimated regression coefficients as a package like Minitab.
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30
In a regression model of student grades, we would code the nine categories of business courses taken (ACC, FIN, ECN, MGT, MKT, MIS, ORG, POM, QMM) by including nine binary (0 or 1) predictors in the regression.
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31
Statisticians who work with cross-sectional data generally do not anticipate autocorrelation.
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32
A high variance inflation factor (VIF) indicates a significant predictor in the regression.
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33
A multiple regression with 60 observations should not have 13 predictors.
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34
A regression of Y using four independent variables X1, X2, X3, X4 could also have up to four nonlinear terms (X2) and six simple interaction terms (XjXk) if you have enough observations to justify them.
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35
The first differences transformation might be tried if autocorrelation is found in a time-series data set.
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36
The ill effects of heteroscedasticity might be mitigated by redefining totals (e.g., total number of homicides) as relative values (e.g., homicide rate per 100,000 population).
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37
When multicollinearity is present, the regression model is of no use for making predictions.
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38
Autocorrelation may be detected by looking at a plot of the residuals against time.
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39
Autocorrelation of the residuals may affect the reliability of the t-values for the estimated coefficients of the predictors X1, X2,…, Xk.
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40
A widening pattern of residuals as X increases would suggest heteroscedasticity.
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41
A test is conducted in 22 cities to see if giving away free transit system maps will increase the number of bus riders. In a regression analysis, the dependent variable Y is the increase in bus riders (in thousands of persons) from the start of the test until its conclusion. The independent variables are X1 = the number (in thousands) of free maps distributed and a binary variable X2 = 1 if the city has free downtown parking, 0 otherwise. The estimated regression equation is . In city 3, the observed Y value is 7.3, X1 = 140, and X2 = 0. The residual for city 3 (in thousands) is:
A)6.15.
B)1.15.
C)4.83.
D)1.57.
A)6.15.
B)1.15.
C)4.83.
D)1.57.
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42
In a multiple regression with five predictors in a sample of 56 U.S. cities, we would use F5,50 in a test of overall significance.
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43
Non-normal residuals lead to biased estimates of the coefficients in a regression model.
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44
Unlike other predictors, a binary predictor has a t-value that is either 0 or 1.
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45
Multicollinearity refers to relationships among the independent variables.
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46
A fitted multiple regression equation is Y = 12 + 3X1 - 5X2 + 7X3 + 2X4. When X1 increases 2 units and X2 increases 2 units as well, while X3 and X4 remain unchanged, what change would you expect in your estimate of Y?
A)Decrease by 2
B)Decrease by 4
C)Increase by 2
D)No change in Y
A)Decrease by 2
B)Decrease by 4
C)Increase by 2
D)No change in Y
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47
A multiple regression analysis with two independent variables yielded the following results in the ANOVA table: SS(Total) = 798, SS(Regression) = 738, SS(Error) = 60. The multiple correlation coefficient is:
A).2742
B).0752
C).9248
D).9617
A).2742
B).0752
C).9248
D).9617
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48
A large VIF (e.g., 10 or more) would indicate multicollinearity.
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49
If X2 is a binary predictor in Y = β0 + β1X1 + β2X2, then which statement is most nearly correct?
A)X2 = 1 should represent the most desirable condition.
B)X2 would be a significant predictor if β2 = 423.72.
C)X2 = 0, X2 = 1, X2 = 2 would be appropriate if three categories exist.
D)X2 will shift the estimated equation either by 0 units or by β2 units.
A)X2 = 1 should represent the most desirable condition.
B)X2 would be a significant predictor if β2 = 423.72.
C)X2 = 0, X2 = 1, X2 = 2 would be appropriate if three categories exist.
D)X2 will shift the estimated equation either by 0 units or by β2 units.
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50
The unexplained sum of squares measures variation in the dependent variable Y about the:
A)mean of the Y values.
B)estimated Y values.
C)mean of the X values.
D)Y-intercept.
A)mean of the Y values.
B)estimated Y values.
C)mean of the X values.
D)Y-intercept.
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51
In a multiple regression with five predictors in a sample of 56 U.S. cities, what would be the critical value for an F-test of overall significance at α = .05?
A)2.45
B)2.37
C)2.40
D)2.56
A)2.45
B)2.37
C)2.40
D)2.56
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52
The t test shows the ratio of an estimated coefficient to its standard error.
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53
In a multiple regression with six predictors in a sample of 67 U.S. cities, what would be the critical value for an F-test of overall significance at α = .05?
A)2.29
B)2.25
C)2.37
D)2.18
A)2.29
B)2.25
C)2.37
D)2.18
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54
Heteroscedasticity exists when all the errors (residuals) have the same variance.
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55
Which of the following is not true of the standard error of the regression?
A)It is a measure of the accuracy of the prediction.
B)It is based on squared vertical deviations between the actual and predicted values of Y.
C)It would be negative when there is an inverse relationship in the model.
D)It is used in constructing confidence and prediction intervals for Y.
A)It is a measure of the accuracy of the prediction.
B)It is based on squared vertical deviations between the actual and predicted values of Y.
C)It would be negative when there is an inverse relationship in the model.
D)It is used in constructing confidence and prediction intervals for Y.
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56
Non-normality of residuals is not usually considered a major problem unless there are outliers.
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57
When predictor variables are strongly related to each other, the __________ of the regression estimates is questionable.
A)logic
B)fit
C)parsimony
D)stability
A)logic
B)fit
C)parsimony
D)stability
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58
In the fitted regression Y = 12 + 3X1 - 5X2 + 27X3 + 2X4 the most significant predictor is X3.
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59
Given that the fitted regression is Y = 76.40 - 6.388X1 + 0.870X2, the standard error of b1 is 1.453, and n = 63, at α = .05, we can conclude that X1 is a significant predictor of Y.
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60
A squared predictor is used to test for nonlinearity in the predictor's relationship to Y.
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61
Part of a regression output is provided below. Some of the information has been omitted. The approximate value of F is:
A)1605.7.
B)0.9134.
C)89.66.
D)impossible to calculate with the given information.
A)1605.7.
B)0.9134.
C)89.66.
D)impossible to calculate with the given information.
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62
Which is a characteristic of the variance inflation factor (VIF)?
A)It is insignificant unless the corresponding t statistic is significant.
B)It reveals collinearity rather than multicollinearity.
C)It measures the degree of significance of each predictor.
D)It indicates the predictor's degree of multicollinearity.
A)It is insignificant unless the corresponding t statistic is significant.
B)It reveals collinearity rather than multicollinearity.
C)It measures the degree of significance of each predictor.
D)It indicates the predictor's degree of multicollinearity.
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63
Part of a regression output is provided below. Some of the information has been omitted. The SS (residual) is:
A)3177.17.
B)301.19.
C)17.71.
D)impossible to determine.
A)3177.17.
B)301.19.
C)17.71.
D)impossible to determine.
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64
A fitted multiple regression equation is Y = 28 + 5X1 - 4X2 + 7X3 + 2X4. When X1 increases 2 units and X2 increases 2 units as well, while X3 and X4 remain unchanged, what change would you expect in your estimate of Y?
A)Increase by 2
B)Decrease by 4
C)Increase by 4
D)No change in Y
A)Increase by 2
B)Decrease by 4
C)Increase by 4
D)No change in Y
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65
Using a sample of 63 observations, a dependent variable Y is regressed against two variables X1 and X2 to obtain the fitted regression equation Y = 76.40 - 6.388X1 + 0.870X2. The standard error of b1 is 3.453 and the standard error of b2 is 0.611. At α = .05, we could:
A)conclude that both coefficients differ significantly from zero.
B)reject H0: β1 ≥ 0 and conclude H0: β1 < 0.
C)reject H0: β2 ≤ 0 and conclude H0: β1 > 0.
D)conclude that Evans' Rule has been violated.
A)conclude that both coefficients differ significantly from zero.
B)reject H0: β1 ≥ 0 and conclude H0: β1 < 0.
C)reject H0: β2 ≤ 0 and conclude H0: β1 > 0.
D)conclude that Evans' Rule has been violated.
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66
Refer to this ANOVA table from a regression: Which statement is not accurate?
A)The F-test is significant at ? = .05.
B)There were 50 observations.
C)There were 5 predictors.
D)There would be 50 residuals.
A)The F-test is significant at ? = .05.
B)There were 50 observations.
C)There were 5 predictors.
D)There would be 50 residuals.
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67
A realtor is trying to predict the selling price of houses in Greenville (in thousands of dollars) as a function of Size (measured in thousands of square feet) and whether or not there is a fireplace (FP is 0 if there is no fireplace, 1 if there is a fireplace). Part of the regression output is provided below, based on a sample of 20 homes. Some of the information has been omitted. Which statement is supported by the regression output?
A)At ? = .05, FP is not a significant predictor in a two-tailed test.
B)A fireplace adds around $6476 to the selling price of the average house.
C)A large house with no fireplace will sell for more than a small house with a fireplace.
D)FP is a more significant predictor than Size.
A)At ? = .05, FP is not a significant predictor in a two-tailed test.
B)A fireplace adds around $6476 to the selling price of the average house.
C)A large house with no fireplace will sell for more than a small house with a fireplace.
D)FP is a more significant predictor than Size.
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68
A useful guideline in determining the extent of collinearity in a multiple regression model is:
A)Sturges' Rule.
B)Klein's Rule.
C)Occam's Rule.
D)Pearson's Rule.
A)Sturges' Rule.
B)Klein's Rule.
C)Occam's Rule.
D)Pearson's Rule.
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69
Refer to the following correlation matrix that was part of a regression analysis. The dependent variable was Abort (the number of abortions per 1000 women of childbearing age). The regression was estimated using data for the 50 U.S. states with these predictors: EdSpend = public K-12 school expenditure per capita, Age = median age of population, Unmar = percent of total births by unmarried women, Infmor = infant mortality rate in deaths per 1000 live births. Using a two-tailed correlation test, which statement is not accurate?
A)Age and Infmor are not significantly correlated at ? = .05.
B)Abort and Unmar are significantly correlated at ? = .05.
C)Unmar and Infmor are significantly correlated at ? = .05.
D)The first column of the table shows evidence of multicollinearity.
A)Age and Infmor are not significantly correlated at ? = .05.
B)Abort and Unmar are significantly correlated at ? = .05.
C)Unmar and Infmor are significantly correlated at ? = .05.
D)The first column of the table shows evidence of multicollinearity.
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70
In a multiple regression all of the following are true regarding residuals except:
A)their sum always equals zero.
B)they are the differences between observed and predicted values of the response variable.
C)they may be used to detect multicollinearity.
D)they may be used to detect heteroscedasticity.
A)their sum always equals zero.
B)they are the differences between observed and predicted values of the response variable.
C)they may be used to detect multicollinearity.
D)they may be used to detect heteroscedasticity.
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71
The residual plot below suggests which violation(s) of regression assumptions? 
A)Autocorrelation
B)Heteroscedasticity
C)Non-normality
D)Multicollinearity

A)Autocorrelation
B)Heteroscedasticity
C)Non-normality
D)Multicollinearity
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72
Refer to this ANOVA table from a regression: For this regression, the R2 is:
A).3995.
B).6005.
C).6654.
D).8822.
A).3995.
B).6005.
C).6654.
D).8822.
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73
A realtor is trying to predict the selling price of houses in Greenville (in thousands of dollars) as a function of Size (measured in thousands of square feet) and whether or not there is a fireplace (FP is 0 if there is no fireplace, 1 if there is a fireplace). Part of the regression output is provided below, based on a sample of 20 homes. Some of the information has been omitted. The estimated coefficient for Size is approximately:
A)9.5.
B)13.8.
C)122.5.
D)1442.6.
A)9.5.
B)13.8.
C)122.5.
D)1442.6.
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74
Which is not a standard criterion for assessing a regression model?
A)Logic of causation
B)Overall fit
C)Degree of collinearity
D)Binary predictors
A)Logic of causation
B)Overall fit
C)Degree of collinearity
D)Binary predictors
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75
A log transformation might be appropriate to alleviate which problem(s)?
A)Heteroscedastic residuals
B)Multicollinearity
C)Autocorrelated residuals
A)Heteroscedastic residuals
B)Multicollinearity
C)Autocorrelated residuals
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76
A realtor is trying to predict the selling price of houses in Greenville (in thousands of dollars) as a function of Size (measured in thousands of square feet) and whether or not there is a fireplace (FP is 0 if there is no fireplace, 1 if there is a fireplace). The regression output is provided below. Some of the information has been omitted. How many predictors (independent variables) were used in the regression?
A)20
B)18
C)3
D)2
A)20
B)18
C)3
D)2
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77
Refer to the following regression results. The dependent variable is Abort (the number of abortions per 1000 women of childbearing age). The regression was estimated using data for the 50 U.S. states with these predictors: EdSpend = public K-12 school expenditure per capita, Age = median age of population, Unmar = percent of total births by unmarried women, Infmor = infant mortality rate in deaths per 1000 live births. Which statement is not supported by a two-tailed test?
A)Unmar is a significant predictor at ? = .01.
B)EdSpend is a significant predictor at ? = .20.
C)Infmor is not a significant predictor at ? = .05.
D)Age is not a significant predictor at ? = .05.
A)Unmar is a significant predictor at ? = .01.
B)EdSpend is a significant predictor at ? = .20.
C)Infmor is not a significant predictor at ? = .05.
D)Age is not a significant predictor at ? = .05.
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78
A realtor is trying to predict the selling price of houses in Greenville (in thousands of dollars) as a function of Size (measured in thousands of square feet) and whether or not there is a fireplace (FP is 0 if there is no fireplace, 1 if there is a fireplace). The regression output is provided below. Some of the information has been omitted. Which of the following conclusions can be made based on the F-test?
A)The p-value on the F-test will be very high.
B)At least one of the predictors is useful in explaining Y.
C)The model is of no use in predicting selling prices of houses.
D)The estimates were based on a sample of 19 houses.
A)The p-value on the F-test will be very high.
B)At least one of the predictors is useful in explaining Y.
C)The model is of no use in predicting selling prices of houses.
D)The estimates were based on a sample of 19 houses.
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79
If the standard error is 12, the width of a quick prediction interval for Y is:
A)±15.
B)±24.
C)±19.
D)impossible to determine without an F table.
A)±15.
B)±24.
C)±19.
D)impossible to determine without an F table.
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80
Which is not a name often given to an independent variable that takes on just two values (0 or 1) according to whether or not a given characteristic is absent or present?
A)Absent variable
B)Binary variable
C)Dummy variable
A)Absent variable
B)Binary variable
C)Dummy variable
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