Partially Collapsed Gibbs Samplers 论文

2008Journal of the American Statistical Association引用 271
Bayesian Methods and Mixture ModelsMarkov Chains and Monte Carlo MethodsGaussian Processes and Bayesian Inference

详细信息

发表期刊/会议
Journal of the American Statistical Association
发表日期
2008-06-01
发表年份
2008

关键词

Bayesian Methods and Mixture ModelsMarkov Chains and Monte Carlo MethodsGaussian Processes and Bayesian Inference

摘要

Ever-increasing computational power, along with ever–more sophisticated statistical computing techniques, is making it possible to fit ever–more complex statistical models. Among the more computationally intensive methods, the Gibbs sampler is popular because of its simplicity and power to effectively generate samples from a high-dimensional probability distribution. Despite its simple implementation and description, however, the Gibbs sampler is criticized for its sometimes slow convergence, especially when it is used to fit highly structured complex models. Here we present partially collapsed Gibbs sampling strategies that improve the convergence by capitalizing on a set of functionally incompatible conditional distributions. Such incompatibility generally is avoided in the construction of a Gibbs sampler, because the resulting convergence properties are not well understood. We introduce three basic tools (marginalization, permutation, and trimming) that allow us to transform a Gibbs sampler into a partially collapsed Gibbs sampler with known stationary distribution and faster convergence.