Q50. Hays decides to test the overall effectiveness of the both independent variables in explaining sales for Milky Way. Assuming that the total sum of squares is 389.14, the sum of squared errors is 146.85 and the mean squared error is 2.576, calculate and interpret the R2.
A) The R2 equals 0.242, indicating that the two independent variables account for 24.2% of the variation in monthly sales.
B) The R2 equals 0.623, indicating that the two independent variables account for 37.7% of the variation in monthly sales.
C) The R2 equals 0.623, indicating that the two independent variables account for 62.3% of the variation in monthly sales.
Q51. Stepp is concerned about the validity of Hays’ regression analysis and asks Hays if he can test for the presence of heteroskedasticity. Hays complies with Stepp’s request, and detects the presence of unconditional heteroskedasticity. Which of the following statements regarding heteroskedasticity is most correct?
A) Heteroskedasticity can be detected either by examining scatter plots of the residual or by using the Durbin-Watson test.
B) Unconditional heteroskedasticity usually causes no major problems with the regression.
C) Unconditional heteroskedasticity does create significant problems for statistical inference.
Q52. John Rains, CFA, is a professor of finance at a large university located in the
Rains decides to construct a sample regression analysis case study for his students in order to demonstrate a “real-life” application of the concepts. He begins by compiling financial information on a fictitious company called Big Rig, Inc. According to the case study, Big Rig is the primary producer of the equipment used in the exploration for and drilling of new oil and gas wells in the
Rains constructs a basic regression model for Big Rig in order to estimate its profitability (in millions), using two independent variables: the number of new wells drilled in the U.S. (WLS) and the number of new competitors (COMP) entering the market:
Profits = b0 + b1WLS – b2COMP + ε
Based on the model, the estimated regression equation is:
Profits = 22.5 + 0.98(WLS) − 0.35(COMP)
Using the past 5 years of quarterly data, he calculated the following regression estimates for Big Rig, Inc:
| Coefficient | Standard Error |
Intercept | 22.5 | 2.465 |
WLS | 0.98 | 0.683 |
COMP | 0.35 | 0.186 |
Using the information presented, the t-statistic for the number of new competitors (COMP) coefficient is:
A) 1.435.
B) 1.882.
C) 9.128.
答案和详解如下:
Q50. Hays decides to test the overall effectiveness of the both independent variables in explaining sales for Milky Way. Assuming that the total sum of squares is 389.14, the sum of squared errors is 146.85 and the mean squared error is 2.576, calculate and interpret the R2.
A) The R2 equals 0.242, indicating that the two independent variables account for 24.2% of the variation in monthly sales.
B) The R2 equals 0.623, indicating that the two independent variables account for 37.7% of the variation in monthly sales.
C) The R2 equals 0.623, indicating that the two independent variables account for 62.3% of the variation in monthly sales.
Correct answer is C)
The R2 is calculated as (SST – SSE) / SST. In this example, R2 equals (389.14–146.85) / 389.14 = .623 or 62.3%. This indicates that the two independent variables together explain 62.3% of the variation in monthly sales. The value for mean squared error is not used in this calculation.
Q51. Stepp is concerned about the validity of Hays’ regression analysis and asks Hays if he can test for the presence of heteroskedasticity. Hays complies with Stepp’s request, and detects the presence of unconditional heteroskedasticity. Which of the following statements regarding heteroskedasticity is most correct?
A) Heteroskedasticity can be detected either by examining scatter plots of the residual or by using the Durbin-Watson test.
B) Unconditional heteroskedasticity usually causes no major problems with the regression.
C) Unconditional heteroskedasticity does create significant problems for statistical inference.
Correct answer is B)
Unconditional heteroskedasticity occurs when the heteroskedasticity is not related to the level of the independent variables. This means that it does not systematically increase or decrease with changes in the independent variable(s). Note that heteroskedasticity occurs when the variance of the residuals is different across all observations in the sample and can be detected either by examining scatter plots or using a Breusch-Pagen test.
Q52. John Rains, CFA, is a professor of finance at a large university located in the
Rains decides to construct a sample regression analysis case study for his students in order to demonstrate a “real-life” application of the concepts. He begins by compiling financial information on a fictitious company called Big Rig, Inc. According to the case study, Big Rig is the primary producer of the equipment used in the exploration for and drilling of new oil and gas wells in the
Rains constructs a basic regression model for Big Rig in order to estimate its profitability (in millions), using two independent variables: the number of new wells drilled in the U.S. (WLS) and the number of new competitors (COMP) entering the market:
Profits = b0 + b1WLS – b2COMP + ε
Based on the model, the estimated regression equation is:
Profits = 22.5 + 0.98(WLS) − 0.35(COMP)
Using the past 5 years of quarterly data, he calculated the following regression estimates for Big Rig, Inc:
| Coefficient | Standard Error |
Intercept | 22.5 | 2.465 |
WLS | 0.98 | 0.683 |
COMP | 0.35 | 0.186 |
Using the information presented, the t-statistic for the number of new competitors (COMP) coefficient is:
A) 1.435.
B) 1.882.
C) 9.128.
Correct answer is B)
To test whether a coefficient is statistically significant, the null hypothesis is that the slope coefficient is zero. The t-statistic for the COMP coefficient is calculated as follows:
(0.35 – 0.0) / 0.186 = 1.882
thanx
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