The R-Squared value can be artificially inflated by adding more predictors, but the ________ helps mitigate this issue.
- Adjusted R-Squared
- MAE
- MSE
- RMSE
The R-Squared value can be artificially increased by adding irrelevant predictors. Adjusted R-Squared helps mitigate this by accounting for the number of predictors, penalizing models for including unnecessary complexity. It provides a more balanced evaluation of the model's fit and helps to avoid the trap of overfitting by adding more predictors.
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