Asymptotic Behaviour of the Posterior Distribution in Overfitted Mixture Models 论文

2011Journal of the Royal Statistical Society Series B (Statistical Methodology)引用 295
Bayesian Methods and Mixture ModelsStatistical Distribution Estimation and ApplicationsStochastic processes and statistical mechanics

摘要

Summary We study the asymptotic behaviour of the posterior distribution in a mixture model when the number of components in the mixture is larger than the true number of components: a situation which is commonly referred to as an overfitted mixture. We prove in particular that quite generally the posterior distribution has a stable and interesting behaviour, since it tends to empty the extra components. This stability is achieved under some restriction on the prior, which can be used as a guideline for choosing the prior. Some simulations are presented to illustrate this behaviour.