Spatial mixing and approximate counting for Potts model on graphs with bounded average degree
Yitong Yin, Chihao Zhang

TL;DR
This paper introduces a new framework linking contraction functions to strong spatial mixing in the Potts model on graphs with bounded average degree, leading to improved algorithms for approximate counting and sampling.
Contribution
It establishes a novel connection between contraction functions and strong spatial mixing, generalizing previous notions and enabling efficient algorithms for Potts models on broader graph classes.
Findings
FPTAS for partition function with improved bounds on q and beta
Efficient sampler for Potts model on Erdős-Rényi graphs
Improved bounds for q-coloring in sparse random graphs
Abstract
We propose a notion of contraction function for a family of graphs and establish its connection to the strong spatial mixing for spin systems. More specifically, we show that for anti-ferromagnetic Potts model on families of graphs characterized by a specific contraction function, the model exhibits strong spatial mixing, and if further the graphs exhibit certain local sparsity which are very natural and easy to satisfy by typical sparse graphs, then we also have FPTAS for computing the partition function. This new characterization of strong spatial mixing of multi-spin system does not require maximum degree of the graphs to be bounded, but instead it relates the decay of correlation of the model to a notion of effective average degree measured by the contraction of a function on the family of graphs. It also generalizes other notion of effective average degree which may determine the…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Stochastic processes and statistical mechanics · Statistical Methods and Inference
