Bayesian Inference for Logistic Models Using Pólya–Gamma Latent Variables
University of Chicago · The University of Texas at Austin · +2 more institutions
Abstract
We propose a new data-augmentation strategy for fully Bayesian inference in models with binomial likelihoods. The approach appeals to a new class of Pólya--Gamma distributions, which are constructed in detail. A variety of examples are presented to show the versatility of the method, including logistic regression, negative binomial regression, nonlinear mixed-effect models, and spatial models for count data. In each case, our data-augmentation strategy leads to simple, effective methods for posterior inference that (1) circumvent the need for analytic approximations, numerical integration, or Metropolis--Hastings; and (2) outperform other known data-augmentation strategies, both in ease of use and in…
Citation impact
- FWCI
- 36.77
- Percentile
- 100%
- References
- 46
Authors
3Topics & keywords
- Gibbs sampling
- Negative binomial distribution
- Computer science
- Bayesian probability
- Econometrics
- Inference
- Bayesian inference
- Count data