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Quantum Graphical Models and Belief Propagation
Authors:MS Leifer  D Poulin  
Institution:aInstitute for Quantum Computing, University of Waterloo, 200 University Avenue West, Waterloo Ont., Canada N2L 3G1;bPerimeter Institute for Theoretical Physics, 31 Caroline Street North, Waterloo Ont., Canada N2L 2Y5;cCenter for the Physics of Information, California Institute of Technology, 1200 E. California Boulevard, 107-81, Pasadena, CA 91125, USA
Abstract:Belief Propagation algorithms acting on Graphical Models of classical probability distributions, such as Markov Networks, Factor Graphs and Bayesian Networks, are amongst the most powerful known methods for deriving probabilistic inferences amongst large numbers of random variables. This paper presents a generalization of these concepts and methods to the quantum case, based on the idea that quantum theory can be thought of as a noncommutative, operator-valued, generalization of classical probability theory. Some novel characterizations of quantum conditional independence are derived, and definitions of Quantum n-Bifactor Networks, Markov Networks, Factor Graphs and Bayesian Networks are proposed. The structure of Quantum Markov Networks is investigated and some partial characterization results are obtained, along the lines of the Hammersley–Clifford theorem. A Quantum Belief Propagation algorithm is presented and is shown to converge on 1-Bifactor Networks and Markov Networks when the underlying graph is a tree. The use of Quantum Belief Propagation as a heuristic algorithm in cases where it is not known to converge is discussed. Applications to decoding quantum error correcting codes and to the simulation of many-body quantum systems are described.
Keywords:Quantum information  Markov Networks  Bayesian Networks  Factor Graphs  Graphoids  Belief Propagation  Sum–  product  Quantum error correction  Quantum many-body systems
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