Information-Theoretic Limits of Selecting Binary Graphical Models in High Dimensions

The problem of graphical model selection is to estimate the graph structure of a Markov random field given samples from it. We analyze the information-theoretic limitations of the problem of graph selection for binary Markov random fields under high-dimensional scaling, in which the graph size and t...

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Bibliographic Details
Published in:IEEE transactions on information theory Vol. 58; no. 7; pp. 4117 - 4134
Main Authors: Santhanam, Narayana P., Wainwright, Martin J.
Format: Journal Article
Language:English
Published: New York, NY IEEE 01.07.2012
Institute of Electrical and Electronics Engineers
The Institute of Electrical and Electronics Engineers, Inc. (IEEE)
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ISSN:0018-9448, 1557-9654
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Summary:The problem of graphical model selection is to estimate the graph structure of a Markov random field given samples from it. We analyze the information-theoretic limitations of the problem of graph selection for binary Markov random fields under high-dimensional scaling, in which the graph size and the number of edges k, and/or the maximal node degree d, are allowed to increase to infinity as a function of the sample size n. For pair-wise binary Markov random fields, we derive both necessary and sufficient conditions for correct graph selection over the class G p,k of graphs on vertices with at most k edges, and over the class G p,d of graphs on p vertices with maximum degree at most d. For the class G p,k , we establish the existence of constants c and c' such that if n <; ck log p, any method has error probability at least 1/2 uniformly over the family, and we demonstrate a graph decoder that succeeds with high probability uniformly over the family for sample sizes n >; c' k 2 log p. Similarly, for the class G p,d , we exhibit constants c and c' such that for n <; cd 2 log p, any method fails with probability at least 1/2, and we demonstrate a graph decoder that succeeds with high probability for n >; c' d 3 log p.
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ISSN:0018-9448
1557-9654
DOI:10.1109/TIT.2012.2191659