For two valid regression models which have same dependent variable, if regression model A and regression model B have the
followings,
Regression A: Residual Standard error = 30.33, Multiple R squared = 0.764, Adjusted R squared = 0.698
Regression B: Residual Standard error = 40.53, Multiple R squared = 0.784, Adjusted R squared = 0.658
Then which one is the correct one? Choose all applied.
a. |
Model A is better than B since Model A has smaller residual standard error than B. |
|
b. |
Model A is better than B since Model A has higher Adjusted R squared than B. |
|
c. |
Model B is better than A since Model B has higher Multiple R squared than A. |
|
d. |
Overall, Model A is better than B. |
For two valid regression models which have same dependent variable, if regression model A and regression...
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