Free energy methods for Bayesian inference: efficient exploration of univariate Gaussian mixture posteriors

被引:0
|
作者
Nicolas Chopin
Tony Lelièvre
Gabriel Stoltz
机构
[1] CREST (ENSAE),CERMICS, Projet MICMAC Ecole des Ponts ParisTech–INRIA
[2] Université Paris Est,undefined
来源
Statistics and Computing | 2012年 / 22卷
关键词
Adaptive biasing force; Adaptive biasing potential; Adaptive Markov chain Monte Carlo; Importance sampling; Mixture models;
D O I
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学科分类号
摘要
Because of their multimodality, mixture posterior distributions are difficult to sample with standard Markov chain Monte Carlo (MCMC) methods. We propose a strategy to enhance the sampling of MCMC in this context, using a biasing procedure which originates from computational Statistical Physics. The principle is first to choose a “reaction coordinate”, that is, a “direction” in which the target distribution is multimodal. In a second step, the marginal log-density of the reaction coordinate with respect to the posterior distribution is estimated; minus this quantity is called “free energy” in the computational Statistical Physics literature. To this end, we use adaptive biasing Markov chain algorithms which adapt their targeted invariant distribution on the fly, in order to overcome sampling barriers along the chosen reaction coordinate. Finally, we perform an importance sampling step in order to remove the bias and recover the true posterior. The efficiency factor of the importance sampling step can easily be estimated a priori once the bias is known, and appears to be rather large for the test cases we considered.
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页码:897 / 916
页数:19
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