Belief Propagation, Bethe Approximation and Polynomials
Damian Straszak, Nisheeth K. Vishnoi

TL;DR
This paper explores the relationship between belief propagation, Bethe approximation, and polynomials in factor graphs, providing new conditions under which the Bethe approximation bounds the partition function.
Contribution
It introduces a polynomial optimization framework and a sufficient condition based on real stable polynomials for the Bethe approximation to be a lower bound.
Findings
Bethe approximation is a lower bound under certain analytic conditions.
Factor graphs can be analyzed through polynomial optimization.
Connection to real stable polynomials offers new insights.
Abstract
Factor graphs are important models for succinctly representing probability distributions in machine learning, coding theory, and statistical physics. Several computational problems, such as computing marginals and partition functions, arise naturally when working with factor graphs. Belief propagation is a widely deployed iterative method for solving these problems. However, despite its significant empirical success, not much is known about the correctness and efficiency of belief propagation. Bethe approximation is an optimization-based framework for approximating partition functions. While it is known that the stationary points of the Bethe approximation coincide with the fixed points of belief propagation, in general, the relation between the Bethe approximation and the partition function is not well understood. It has been observed that for a few classes of factor graphs, the…
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