Bayesian group selection in logistic regression with application to MRI data analysis

  • Lee, Kyoungjae
  • Cao Xuan
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초록

We consider Bayesian logistic regression models with group-structured covariates. In high-dimensional settings, it is often assumed that only a small portion of groups are significant, and thus, consistent group selection is of significant importance. While consistent frequentist group selection methods have been proposed, theoretical properties of Bayesian group selection methods for logistic regression models have not been investigated yet. In this paper, we consider a hierarchical group spike and slab prior for logistic regression models in high-dimensional settings. Under mild conditions, we establish strong group selection consistency of the induced posterior, which is the first theoretical result in the Bayesian literature. Through simulation studies, we demonstrate that the proposed method outperforms existing state-of-the-art methods in various settings. We further apply our method to a magnetic resonance imaging data set for predicting Parkinson's disease and show its benefits over other contenders.

키워드

group spike and slab priorhigh-dimensionalstrong selection consistencyVARIABLE SELECTIONMODEL SELECTIONGROUP LASSOCONSISTENCYDISEASESPIKE
제목
Bayesian group selection in logistic regression with application to MRI data analysis
저자
Lee, KyoungjaeCao Xuan
DOI
10.1111/biom.13290
발행일
2021-06
유형
Article
저널명
Biometrics
77
2
페이지
391 ~ 400