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Articles

Bootstrapping some GLM and survival regression variable selection estimators

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Pages 2625-2645 | Received 07 Apr 2021, Accepted 09 Jul 2021, Published online: 09 Sep 2021
 

Abstract

Inference after variable selection is a very important problem. This paper derives the asymptotic distribution of many variable selection estimators, such as forward selection and backward elimination, when the number of predictors is fixed. Under strong regularity conditions, the variable selection estimators are asymptotically normal, but generally the asymptotic distribution is a nonnormal mixture distribution. The theory shows that the lasso variable selection and elastic net variable selection estimators are n consistent estimators of β when lasso and elastic net are consistent estimators of β. A bootstrap technique to eliminate selection bias is to fit the variable selection estimator β̂VS* to a bootstrap sample to find a submodel, then draw another bootstrap sample and fit the same submodel to get the bootstrap estimator β̂MIX*. Bootstrap confidence regions were used for hypothesis testing.

MATHEMATICS SUBJECT CLASSIFICATION:

Acknowledgments

The authors thank the referees and Editors for their work.

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