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Regression Coefficients Estimates Model formula: mpg - cyl + disp + hp + am Term Coefficient Estimate Standard Error t Value

(d) [4 points) Interpret the meaning of the adj – R value in context of the problem.

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(c). The null and alternative hypothesis of the model adequacy.

Null Hypothesis:

H_{0}: The linear model y=\beta _{0}+\beta _{1}*Cyl+\beta _{2}*disp+\beta _{3}*hp+\beta _{4}*am does not fit the data .

H _{1}:The model fits the data well.

Level of significance: g= 0,05

Test statistic: F test for the regression using ratio of mean squares due to regression and Mean square due to Error.

From the ANOVA table, we shall get the F-ratio and the p-value

Decision rule: Reject H_{0 if the p-value <0.05.

Conclusion: The p-value for regression term in ANOVA table is 0.0000<0.05, we reject the null hypothesis. Hence, we conclude that the linear model as stated fits the data well.

(d). The adjusted R-squared is a modified version of R-squared that has been adjusted for the number of predictors in the model. . Here, the R-squared for the model is 0.8078 and the dusted R-square is 0.7794. We have there are 3 predictors and the adjusted R-square is after taking care of 3 predictors.

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