4.4 Article

Model selection and estimation in the matrix normal graphical model

Journal

JOURNAL OF MULTIVARIATE ANALYSIS
Volume 107, Issue -, Pages 119-140

Publisher

ELSEVIER INC
DOI: 10.1016/j.jmva.2012.01.005

Keywords

Gaussian graphical model; Gene networks; High dimensional data; I-1 penalized likelihood; Matrix normal distribution; Sparsistency

Funding

  1. NIH [ES009911, CA127334]

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Motivated by analysis of gene expression data measured over different tissues or over time, we consider matrix-valued random variable and matrix-normal distribution, where the precision matrices have a graphical interpretation for genes and tissues, respectively. We present a I-1 penalized likelihood method and an efficient coordinate descent-based computational algorithm for model selection and estimation in such matrix normal graphical models (MNGMs). We provide theoretical results on the asymptotic distributions, the rates of convergence of the estimates and the sparsistency, allowing both the numbers of genes and tissues to diverge as the sample size goes to infinity. Simulation results demonstrate that the MNGMs can lead to a better estimate of the precision matrices and better identifications of the graph structures than the standard Gaussian graphical models. We illustrate the methods with an analysis of mouse gene expression data measured over ten different tissues. (C) 2012 Elsevier Inc. All rights reserved.

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