Data augmentation and Gibbs sampling for regression models of small counts

Publication: Scientific journalJournal articleResearch

Abstract

In this article we consider Bayesian analysis of Poisson regression models. Estimation is carried out within a Bayesian framework using data augmentation and MCMC methods. We suggest a new MCMC sampler, which possesses a Gibbs transition kernel, where we draw from full conditional distributions belonging to standard distribution families, only. This Gibbs sampler is applied to a standard Poisson regression model and to a Poisson regression models
dealing with overdispersion.
Original languageEnglish
Pages (from-to)207 - 220
JournalStudent
Volume5
Publication statusPublished - 1 Oct 2005

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