Open Access
Bayesian Zero-Inflated Negative Binomial Regression Based on Pólya-Gamma Mixtures
Author(s) -
Brian Neelon
Publication year - 2019
Publication title -
bayesian analysis
Language(s) - Uncategorized
Resource type - Journals
SCImago Journal Rank - 2.685
H-Index - 58
eISSN - 1936-0975
pISSN - 1931-6690
DOI - 10.1214/18-ba1132
Subject(s) - gibbs sampling , bayesian probability , negative binomial distribution , multivariate statistics , statistics , computer science , latent variable , inference , econometrics , covariate , mathematics , artificial intelligence , poisson distribution
Motivated by a study examining spatiotemporal patterns in inpatient hospitalizations, we propose an efficient Bayesian approach for fitting zero-inflated negative binomial models. To facilitate posterior sampling, we introduce a set of latent variables that are represented as scale mixtures of normals, where the precision terms follow independent Pólya-Gamma distributions. Conditional on the latent variables, inference proceeds via straightforward Gibbs sampling. For fixed-effects models, our approach is comparable to existing methods. However, our model can accommodate more complex data structures, including multivariate and spatiotemporal data, settings in which current approaches often fail due to computational challenges. Using simulation studies, we highlight key features of the method and compare its performance to other estimation procedures. We apply the approach to a spatiotemporal analysis examining the number of annual inpatient admissions among United States veterans with type 2 diabetes.