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Fast Bayesian Variable Selection in Binomial and Negative Binomial Regression

Authors :
Jankowiak, Martin
Publication Year :
2021

Abstract

Bayesian variable selection is a powerful tool for data analysis, as it offers a principled method for variable selection that accounts for prior information and uncertainty. However, wider adoption of Bayesian variable selection has been hampered by computational challenges, especially in difficult regimes with a large number of covariates or non-conjugate likelihoods. Generalized linear models for count data, which are prevalent in biology, ecology, economics, and beyond, represent an important special case. Here we introduce an efficient MCMC scheme for variable selection in binomial and negative binomial regression that exploits Tempered Gibbs Sampling (Zanella and Roberts, 2019) and that includes logistic regression as a special case. In experiments we demonstrate the effectiveness of our approach, including on cancer data with seventeen thousand covariates.<br />Comment: 18 pages; this work is superseded by arXiv:2208.01180

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2106.14981
Document Type :
Working Paper