Information Theoretic Properties of Markov Random Fields, and their Algorithmic Applications
May 31, 2017 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Linus Hamilton, Frederic Koehler, Ankur Moitra
arXiv ID
1705.11107
Category
cs.LG: Machine Learning
Cross-listed
cs.DS,
cs.IT,
math.ST
Citations
67
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Markov random fields area popular model for high-dimensional probability distributions. Over the years, many mathematical, statistical and algorithmic problems on them have been studied. Until recently, the only known algorithms for provably learning them relied on exhaustive search, correlation decay or various incoherence assumptions. Bresler gave an algorithm for learning general Ising models on bounded degree graphs. His approach was based on a structural result about mutual information in Ising models. Here we take a more conceptual approach to proving lower bounds on the mutual information through setting up an appropriate zero-sum game. Our proof generalizes well beyond Ising models, to arbitrary Markov random fields with higher order interactions. As an application, we obtain algorithms for learning Markov random fields on bounded degree graphs on $n$ nodes with $r$-order interactions in $n^r$ time and $\log n$ sample complexity. The sample complexity is information theoretically optimal up to the dependence on the maximum degree. The running time is nearly optimal under standard conjectures about the hardness of learning parity with noise.
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