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Robust Bayesian model selection for heavy-tailed linear regression using finite mixtures

Authors :
Marcos O. Prates
Victor H. Lachos
Flávio B. Gonçalves
Source :
Braz. J. Probab. Stat. 34, no. 1 (2020), 51-70
Publication Year :
2020
Publisher :
Institute of Mathematical Statistics, 2020.

Abstract

In this paper we present a novel methodology to perform Bayesian model selection in linear models with heavy-tailed distributions. We consider a finite mixture of distributions to model a latent variable where each component of the mixture corresponds to one possible model within the symmetrical class of normal independent distributions. Naturally, the Gaussian model is one of the possibilities. This allows for a simultaneous analysis based on the posterior probability of each model. Inference is performed via Markov chain Monte Carlo - a Gibbs sampler with Metropolis-Hastings steps for a class of parameters. Simulated examples highlight the advantages of this approach compared to a segregated analysis based on arbitrarily chosen model selection criteria. Examples with real data are presented and an extension to censored linear regression is introduced and discussed.

Details

ISSN :
01030752
Volume :
34
Database :
OpenAIRE
Journal :
Brazilian Journal of Probability and Statistics
Accession number :
edsair.doi.dedup.....d11330bc32ae568e29dbd9ed64d684f5
Full Text :
https://doi.org/10.1214/18-bjps417