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Efficient Learning of Optimal Markov Network Topology with k-Tree Modeling

21 January 2018
Liang Ding
D. Chang
R. Malmberg
Aaron Martínez
David Robinson
Matthew Wicker
Hongfei Yan
Liming Cai
ArXiv (abs)PDFHTML
Abstract

The seminal work of Chow and Liu (1968) shows that approximation of a finite probabilistic system by Markov trees can achieve the minimum information loss with the topology of a maximum spanning tree. Our current paper generalizes the result to Markov networks of tree width ≤k\leq k≤k, for every fixed k≥2k\geq 2k≥2. In particular, we prove that approximation of a finite probabilistic system with such Markov networks has the minimum information loss when the network topology is achieved with a maximum spanning kkk-tree. While constructing a maximum spanning kkk-tree is intractable for even k=2k=2k=2, we show that polynomial algorithms can be ensured by a sufficient condition accommodated by many meaningful applications. In particular, we prove an efficient algorithm for learning the optimal topology of higher order correlations among random variables that belong to an underlying linear structure.

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