Open Access
2013 Learning loosely connected Markov random fields
Rui Wu, R. Srikant, Jian Ni
Stoch. Syst. 3(2): 362-404 (2013). DOI: 10.1214/12-SSY073

Abstract

We consider the structure learning problem for graphical models that we call loosely connected Markov random fields, in which the number of short paths between any pair of nodes is small, and present a new conditional independence test based algorithm for learning the underlying graph structure. The novel maximization step in our algorithm ensures that the true edges are detected correctly even when there are short cycles in the graph. The number of samples required by our algorithm is $C\log p$, where $p$ is the size of the graph and the constant $C$ depends on the parameters of the model. We show that several previously studied models are examples of loosely connected Markov random fields, and our algorithm achieves the same or lower computational complexity than the previously designed algorithms for individual cases. We also get new results for more general graphical models, in particular, our algorithm learns general Ising models on the Erdős-Rényi random graph $\mathcal{G}(p,\frac{c}{p})$ correctly with running time $O(np^{5})$.

Citation

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Rui Wu. R. Srikant. Jian Ni. "Learning loosely connected Markov random fields." Stoch. Syst. 3 (2) 362 - 404, 2013. https://doi.org/10.1214/12-SSY073

Information

Published: 2013
First available in Project Euclid: 11 February 2014

zbMATH: 1352.62133
MathSciNet: MR3353207
Digital Object Identifier: 10.1214/12-SSY073

Subjects:
Primary: 62-09 , 68T05 , 68W40
Secondary: 91C99

Keywords: computational complexity , Markov random field , structure learning algorithm

Rights: Copyright © 2013 INFORMS Applied Probability Society

Vol.3 • No. 2 • 2013
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