JOURNAL ARTICLE

An Expectation Conditional Maximization Approach for Gaussian Graphical Models

Zehang LiTyler H. McCormick

Year: 2019 Journal:   Journal of Computational and Graphical Statistics Vol: 28 (4)Pages: 767-777   Publisher: Taylor & Francis

Abstract

Bayesian graphical models are a useful tool for understanding dependence relationships among many variables, particularly in situations with external prior information. In high-dimensional settings, the space of possible graphs becomes enormous, rendering even state-of-the-art Bayesian stochastic search computationally infeasible. We propose a deterministic alternative to estimate Gaussian and Gaussian copula graphical models using an Expectation Conditional Maximization (ECM) algorithm, extending the EM approach from Bayesian variable selection to graphical model estimation. We show that the ECM approach enables fast posterior exploration under a sequence of mixture priors, and can incorporate multiple sources of information.

Keywords:
Graphical model Computer science Prior probability Gaussian Bayesian probability Conditional dependence Expectation–maximization algorithm Posterior probability Bayesian information criterion Conditional probability distribution Artificial intelligence Algorithm Machine learning Conditional independence Mathematics Maximum likelihood Econometrics Statistics

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19
Cited By
1.84
FWCI (Field Weighted Citation Impact)
73
Refs
0.88
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Citation History

Topics

Bayesian Methods and Mixture Models
Physical Sciences →  Computer Science →  Artificial Intelligence
Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical Methods and Bayesian Inference
Physical Sciences →  Mathematics →  Statistics and Probability

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