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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 computational efficiency. All methods, including an efficient sampler for the Pólya--Gamma distribution, are implemented in the R package BayesLogit . Supplementary materials for this article are available online.
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Nicholas G. Polson
University of Chicago
James G. Scott
The University of Texas at Austin
Jesse Windle
Statistical and Applied Mathematical Sciences Institute
Journal of the American Statistical Association
University of Chicago
Duke University
The University of Texas at Austin
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Polson et al. (Fri,) studied this question.
synapsesocial.com/papers/69d7cfe733ca018b39ae2e76 — DOI: https://doi.org/10.1080/01621459.2013.829001
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