A comparison study of Bayesian variable selection methods for sparse covariance matrices

  • Kim, Bongsu
  • Lee, Kyoungjae
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초록

Continuous shrinkage priors, as well as spike and slab priors, have been widely employed for Bayesian inference about sparse regression coefficient vectors or covariance matrices. Continuous shrinkage priors provide computational advantages over spike and slab priors since their model space is substantially smaller. This is especially true in high-dimensional settings. However, variable selection based on continuous shrinkage priors is not straightforward because they do not give exactly zero values. Although few variable selection approaches based on continuous shrinkage priors have been proposed, no substantial comparative investigations of their performance have been conducted. In this paper, We compare two variable selection methods: a credible interval method and the sequential 2-means algorithm (Li and Pati, 2017). Various simulation scenarios are used to demonstrate the practical performances of the methods. We conclude the paper by presenting some observations and conjectures based on the simulation findings.

키워드

sparse covariance matricescontinuous shrinkage priorvariable selection
제목
A comparison study of Bayesian variable selection methods for sparse covariance matrices
저자
Kim, BongsuLee, Kyoungjae
DOI
10.5351/KJAS.2022.35.2.285
발행일
2022-04
유형
Article
저널명
응용통계연구
35
2
페이지
285 ~ 298