The Simple Linear Regression model is   Y = b0 + b1*X1 + u   and the Multiple Linear Regression model with k variables is:   Y = b0 + b1*X1 + b2*X2 + ... + bk*Xk + u   Y is the dependent variable, the X1, X2, ..., Xk are the explanatory variables, b0 is the intercept, b1, b2, ..., bk are the slope coefficients, and u is the error term,   Yhat represents the OLS fitted values, uhat represent the OLS residuals, b0_hat represents the OLS estimated intercept, and b1_hat, b2_hat,..., bk_hat, represent the OLS estimated slope coefficients. QUESTION 25 In the MLR model, with 150 observations and 5 explanatory variables, suppose you want to test the null hypothesis, H0: b3=0, b4=0 We also know that the RSS of the unrestricted model is 563, while the RSS of a model that excludes the variables associated with the 2 coefficients under the null hypothesis is 577.  Given this information what is the F-statistic for this hypothesis?   It is around -1.79 It is around 1.75 It is around -1.75 It is around 1.79

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7th Edition
ISBN:9781305115545
Author:James Stewart, Lothar Redlin, Saleem Watson
Publisher:James Stewart, Lothar Redlin, Saleem Watson
Chapter1: Equations And Graphs
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The Simple Linear Regression model is

 

Y = b0 + b1*X1 + u

 

and the Multiple Linear Regression model with k variables is:

 

Y = b0 + b1*X1 + b2*X2 + ... + bk*Xk + u

 

Y is the dependent variable, the X1, X2, ..., Xk are the explanatory variables, b0 is the intercept, b1, b2, ..., bk are the slope coefficients, and u is the error term,

 

Yhat represents the OLS fitted values, uhat represent the OLS residuals, b0_hat represents the OLS estimated intercept, and b1_hat, b2_hat,..., bk_hat, represent the OLS estimated slope coefficients.

QUESTION 25

In the MLR model, with 150 observations and 5 explanatory variables, suppose you want to test the null hypothesis,

H0: b3=0, b4=0

We also know that the RSS of the unrestricted model is 563, while the RSS of a model that excludes the variables associated with the 2 coefficients under the null hypothesis is 577.  Given this information what is the F-statistic for this hypothesis?

 

  1. It is around -1.79
  2. It is around 1.75
  3. It is around -1.75
  4. It is around 1.79

 

 

QUESTION 26

In the MLR model, with 1000 observations and 10 explanatory variables, suppose you want to test the null hypothesis:

H0: b5=0, b6=0, b7=0, b8=0, b9=0

We know that the R-squared of the unrestricted model is 0.40, while the R-squared of a model that excludes the variable associated with the coefficients under the null hypothesis is 0.39.  Given this information, which of the following statements is correct?

 

  1. We can reject the null hypothesis at 1% level of significance
  2. We can reject the null hypothesis at 5% level of significance, but not at 1% level of significance
  3. We can reject the null hypothesis at 10% level of significance, but not at 5% level of significance
  4. We cannot reject the null hypothesis even at 10% level of significance

 

 

QUESTION 27

Suppose you have an MLR model with 6 variables, and that the t-statistic associated with the 6th variable of this model is -0.5. Suppose this 6th variable is now removed, and the model is re-estimated by OLS. 

What will happen to the Adjusted R-squared, as we move from the model with 6 variables to the model with 5 variables?

 

  1. It is not possible to say with the provided information
  2. It will decrease
  3. It will remain the same
  4. It will increase
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