Posterior model consistency in high-dimensional Bayesian variable selection with arbitrary priors

Min Hua, Gyuhyeong Goh

Research output: Contribution to journalArticlepeer-review

Abstract

In the context of Bayesian regression modeling, posterior model consistency provides frequentist validation for Bayesian variable selection. A question that has long been open is whether posterior model consistency holds under arbitrary priors when high-dimensional variable selection is performed. In this paper, we aim to give an answer by establishing sufficient conditions for priors under which the posterior model distribution converges to a degenerate distribution at the true model. Our framework considers high-dimensional regression settings where the number of potential predictors grows at a rate faster than the sample size. We demonstrate that a wide selection of priors satisfy the conditions that we establish in this paper.

Original languageEnglish
Article number110415
JournalStatistics and Probability Letters
Volume223
DOIs
StatePublished - Aug 2025

Keywords

  • Approximate marginal likelihood
  • Consistent Bayesian model selection
  • High-dimensional linear regression
  • Posterior model probability

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