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Bayesian Inference on Hierarchical Nonlocal Priors in Generalized Linear Models∗

  • Xuan Cao
  • , Kyoungjae Lee
  • University of Cincinnati

Research output: Contribution to journalArticlepeer-review

Abstract

Variable selection methods with nonlocal priors have been widely studied in linear regression models, and their theoretical and empirical performances have been reported. However, the crucial model selection properties for hierarchical nonlocal priors in high-dimensional generalized linear regression have rarely been investigated. In this paper, we consider a hierarchical nonlocal prior for highdimensional logistic regression models and investigate theoretical properties of the posterior distribution. Specifically, a product moment (pMOM) nonlocal prior is imposed over the regression coefficients with an Inverse-Gamma prior on the tuning parameter. Under standard regularity assumptions, we establish strong model selection consistency in a high-dimensional setting, where the number of covariates is allowed to increase at a sub-exponential rate with the sample size. We implement the Laplace approximation for computing the posterior probabilities, and a modified shotgun stochastic search procedure is suggested for efficiently exploring the model space. We demonstrate the validity of the proposed method through simulation studies and an RNA-sequencing dataset for stratifying disease risk.

Original languageEnglish
Pages (from-to)99-122
Number of pages24
JournalBayesian Analysis
Volume19
Issue number1
DOIs
StatePublished - 2024

Keywords

  • high-dimensional
  • nonlocal prior
  • strong selection consistency

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