Creator |
|
|
Language |
|
Publisher |
|
Date |
|
Source Title |
|
Vol |
|
Publication Type |
|
Access Rights |
|
Rights |
|
Related DOI |
|
Related DOI |
|
|
Related URI |
|
|
Related URI |
|
Related HDL |
|
Relation |
|
|
Abstract |
In regression analysis, the $L_1$ regularization such as the lasso or the SCAD provides sparse solutions, which leads to variable selection. We consider the variable selection problem where variables ...are given as functional forms, using the $L_1$ regularization. In order to select functional variables each of which is controlled by multiple parameters, we treat parameters as grouped parameters and then apply the group SCAD. A crucial issue in the regularization method is the choice of regularization parameters. We derive a model selection criterion for evaluating the model estimated by the regularization method via the group SCAD penalty. Results of simulation and real data analysis show the effectiveness of the proposed modeling strategy.show more
|