Model Selection Method
Use this drop-down menu to select the method to be used for selecting the final predictor variables.
Available methods are detailed in the following table:
Model Selection Method |
Definition |
None |
Choose this option to use all of the variables and backward starts with all of them Caution: Choosing this option can result in long run times when there are thousands of variables. |
Forward |
Choose this option to perform a forward search, beginning with no variables in the model and adding the most significant ones one at a time. |
Backward |
Choose this option to perform a backward search. This option begins with using all of the variables and then removes the least significant ones one at a time. Caution: Choosing this option can result in long run times when there are thousands of variables. |
Stepwise |
Choose this option to perform a forward stepwise method. |
LAR |
Choose this option to perform a least-angle regression1, which begins with no effects. The parameter estimates at any step are shrunken when compared to the corresponding least squares estimates. If the model contains classification variables, then these classification variables are split.2 See the SPLIT option in the CLASS statement of SAS PROC GLMSELECT for details. |
LASSO |
Choose this option to add and delete parameters based on a version of ordinary least squares where the sum of the absolute regression coefficients is constrained3. If the model contains classification variables, then these classification variables are split.2 |
Elastic Net |
Choose this option to augment the data and use a LASSO fit in accordance with an Elastic Net.4 |
To Specify the Method5:
8 | Select the method using the drop-down menu. |