An empirical Bayes procedure for the selection of Gaussian graphical models

被引:2
|
作者
Donnet, Sophie [2 ]
Marin, Jean-Michel [1 ]
机构
[1] Univ Montpellier 2, Inst Math & Modelisat Montpellier, F-34095 Montpellier 5, France
[2] Univ Paris 09, CEREMADE, F-75775 Paris, France
关键词
Gaussian graphical models; Decomposable models; Empirical Bayes; Stochastic Approximation EM; Markov Chain Monte Carlo; WISHART DISTRIBUTIONS; MAXIMUM-LIKELIHOOD; LIMITING RISK; ESTIMATORS; INFERENCE;
D O I
10.1007/s11222-011-9285-5
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
A new methodology for model determination in decomposable graphical Gaussian models (Dawid and Lauritzen in Ann. Stat. 21(3), 1272-1317, 1993) is developed. The Bayesian paradigm is used and, for each given graph, a hyper-inverse Wishart prior distribution on the covariance matrix is considered. This prior distribution depends on hyper-parameters. It is well-known that the models's posterior distribution is sensitive to the specification of these hyper-parameters and no completely satisfactory method is registered. In order to avoid this problem, we suggest adopting an empirical Bayes strategy, that is a strategy for which the values of the hyper-parameters are determined using the data. Typically, the hyper-parameters are fixed to their maximum likelihood estimations. In order to calculate these maximum likelihood estimations, we suggest a Markov chain Monte Carlo version of the Stochastic Approximation EM algorithm. Moreover, we introduce a new sampling scheme in the space of graphs that improves the add and delete proposal of Armstrong et al. (Stat. Comput. 19(3), 303-316, 2009). We illustrate the efficiency of this new scheme on simulated and real datasets.
引用
收藏
页码:1113 / 1123
页数:11
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