Posterior consistency of Dirichlet mixtures in density estimation 论文

1999The Annals of Statistics引用 357
Bayesian Methods and Mixture ModelsAlgorithms and Data CompressionMarkov Chains and Monte Carlo Methods

摘要

A Dirichlet mixture of normal densities is a useful choice for a prior distribution on densities in the problem of Bayesian density estimation. In recent years, efficient Markov chain Monte Carlo method for the computation of the posterior distribution has been developed. The method has been applied to data arising from different fields of interest. The important issue of consistency was however left open. In this paper, we settle this issue in affirmative.