Question
6.a. In a new line entered below this part, s tate the overall significance of this multiple regression. State the specific statistic or statistics that
6.a.In a new line entered below this part, state the overall significance of this multiple regression. State the specific statistic or statistics that were used and how they were used. Finally, conclude whether or not this model is overall significant and state why.
b.In a new line entered below this part, state whether or not the coefficient on each individual predictor variable is significant. Explain your conclusion for each variable, including the specific statistic or statistics that were used and how they were used.
7.a.In a new line entered below this part, state the numerical value of the coefficient of determination for this model.
b.In new lines entered below this part, show that this coefficient is numerically equal to SSR/SST.
c.In a new line entered below this part, state the numerical value of the adjusted coefficient of determination for this model.
d.In a new line entered below this part, state what the adjusted coefficient of determination is adjusted for in the specific context of this problem,
e.In a new line entered below this part, state how much of the variation in mpg is fairly and truthfully represented by this model.
f.In a new line entered below this part, state how much of the variation in mpg is NOT fairly and truthfully represented by this model.
8.a.In a space created below this part, insert a copy of the plot of the residuals of this model against its fitted values.
b.In a new line entered below this part, describe the appearance of this residual plot.
c.In a new line entered below this part, state the RMSE of this regression.
9.a.In a new line entered below this part, state the gasoline mileage (in mpg) predicted for a vehicle that has a 105-horsepower engine, weighs 3380 pounds, and has a manual transmission.
b.In a new line entered below this part, state the numerical value of the residual in gasoline mileage between the mpg calculated in part 9.a and the actual gasoline mileage for this vehicle as listed in the data table.
c.In a new line entered below this part, state two reasons why the result calculated in part 9.a is different from the actual gasoline mileage for this vehicle as listed in the data table.
10.a.In a new line entered below this part, state the gasoline mileage (in mpg) predicted for a vehicle that has a 135-horsepower engine, weighs 2650 pounds, and has an automatic transmission.
b.In a new line entered below this part, state a 95% prediction interval for your prediction in part 10.a.
11.a.In a new space entered below this part, calculate and present the correlation matrix.
b.In a new line entered below this part, based only on your correlation matrix calculated and presented in part 11.a, state the strength of the correlations between the predictor variables.
c.In a new line entered below this part, based only on your correlation matrix calculated and presented in part 11.a, state which, if any, of any of the predictor variables are correlated with each other to such an extent that you suspect that they are not truly independent of each other.
d.In a new line entered below this part, based only on your correlation matrix calculated and presented in part 11.a, state whether or not multicollinearity an issue in this problem and why.
e.In a new line entered below this part, based only on your answer to part 11.d, state whether or not any of the predictor variables should be deleted and why.
e.In a new line entered below this part, based only on your answer to part 11.e, state which predictor variable or variables you recommend for deletion and why.Also state which predictor variable or variables you recommend to retain and why.
12.a.In a new line entered below this part, calculate and state the variance inflation factor, VIF, for each predictor variable.
b.In a new line entered below this part, based on only VIF, state which, if any, of the predictor variables are related to each other to such an extent that you suspect that they are not truly independent of each other (and explain why).
c.In a new line entered below this part, based on only VIF, state whether or not multicollinearity a problem and why.
d.In a new line entered below this part, based on only VIF, state whether you recommend deleting any of the predictor variables.
e.In a new line entered below this part, based only on VIF, state which predictor variable or variables you recommend for deletion and why.Also state which predictor variable or variables you recommend to retain.
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