Gauge-free cluster variational method by maximal messages and moment matching
Eduardo Dominguez, Alejandro Lage-Castellanos, Roberto Mulet and, Federico Ricci-Tersenghi

TL;DR
This paper introduces a gauge-free message passing algorithm for the Cluster Variational Method, utilizing maximal messages and moment matching to improve accuracy and eliminate gauge ambiguities, demonstrated on the Ising model.
Contribution
It proposes a novel gauge-free message passing approach with maximal messages and moment matching for CVM, enhancing accuracy and interpretability.
Findings
Outperforms Bethe estimates for the Ising model critical temperature.
Provides analytical expressions for critical temperatures in general dimensions.
Enables straightforward extension to disordered systems.
Abstract
We present a new implementation of the Cluster Variational Method (CVM) as a message passing algorithm. The kind of message passing algorithms used for CVM, usually named Generalized Belief Propagation, are a generalization of the Belief Propagation algorithm in the same way that CVM is a generalization of the Bethe approximation for estimating the partition function. However, the connection between fixed points of GBP and the extremal points of the CVM free-energy is usually not a one-to-one correspondence, because of the existence of a gauge transformation involving the GBP messages. Our contribution is twofold. Firstly we propose a new way of defining messages (fields) in a generic CVM approximation, such that messages arrive on a given region from all its ancestors, and not only from its direct parents, as in the standard Parent-to-Child GBP. We call this approach maximal…
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