| Literature DB >> 28626348 |
Chiranjit Mukherjee1, Abel Rodriguez2.
Abstract
Gaussian graphical models are popular for modeling high-dimensional multivariate data with sparse conditional dependencies. A mixture of Gaussian graphical models extends this model to the more realistic scenario where observations come from a heterogenous population composed of a small number of homogeneous sub-groups. In this paper we present a novel stochastic search algorithm for finding the posterior mode of high-dimensional Dirichlet process mixtures of decomposable Gaussian graphical models. Further, we investigate how to harness the massive thread-parallelization capabilities of graphical processing units to accelerate computation. The computational advantages of our algorithms are demonstrated with various simulated data examples in which we compare our stochastic search with a Markov chain Monte Carlo algorithm in moderate dimensional data examples. These experiments show that our stochastic search largely outperforms the Markov chain Monte Carlo algorithm in terms of computing-times and in terms of the quality of the posterior mode discovered. Finally, we analyze a gene expression dataset in which Markov chain Monte Carlo algorithms are too slow to be practically useful.Entities:
Keywords: Dirichlet Process Mixture; Gaussian Graphical Model; Graphical Processing Unit; Stochastic Search
Year: 2016 PMID: 28626348 PMCID: PMC5472363 DOI: 10.1080/10618600.2015.1037883
Source DB: PubMed Journal: J Comput Graph Stat ISSN: 1061-8600 Impact factor: 2.302