Quantum algorithm for structure learning of Markov Random Fields
Abstract
Markov random fields (MRFs) appear in many problems in machine learning and statistics. From a computational learning theory point of view, a natural problem of learning MRFs arises: given samples from an MRF from a restricted class, learn the structure of the MRF, that is the neighbors of each node of the underlying graph. In this work, we start at a known near-optimal classical algorithm for this learning problem and develop a modified classical algorithm. This classical algorithm retains the run time and guarantee of the previous algorithm and enables the use of quantum subroutines. Adapting a previous quantum algorithm, the Quantum Sparsitron, we provide a polynomial quantum speedup in terms of the number of variables for learning the structure of an MRF, if the MRF has bounded degree.
Cite
@article{arxiv.2109.01014,
title = {Quantum algorithm for structure learning of Markov Random Fields},
author = {Liming Zhao and Siyi Yang and Patrick Rebentrost},
journal= {arXiv preprint arXiv:2109.01014},
year = {2021}
}
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35 pages