Approximate Dirichlet Process Computing in Finite Normal Mixtures 论文

2002Journal of Computational and Graphical Statistics引用 228
Bayesian Methods and Mixture ModelsMarkov Chains and Monte Carlo MethodsGaussian Processes and Bayesian Inference

摘要

AbstractA rich nonparametric analysis of the finite normal mixture model is obtained by working with a precise truncation approximation of the Dirichlet process. Model fitting is carried out by a simple Gibbs sampling algorithm that directly samples the nonparametric posterior. The proposed sampler mixes well, requires no tuning parameters, and involves only draws from simple distributions, including the draw for the mass parameter that controls clustering, and the draw for the variances with the use of a nonconjugate uniform prior. Working directly with the nonparametric prior is conceptually appealing and among other things leads to graphical methods for studying the posterior mixing distribution as well as penalized MLE procedures for deriving point estimates. We discuss methods for automating selection of priors for the mean and variance components to avoid over or undersmoothing the data. We also look at the effectiveness of incorporating prior information in the form of frequentist point estimates.Key Words: Almost sure truncationBlocked gibbs samplerNonparametric hierarchical modelPenalized MLEPolya urn gibbs samplingRandom probability measure