The Critical Mean-field Chayes-Machta Dynamics
Antonio Blanca, Alistair Sinclair, Xusheng Zhang

TL;DR
This paper proves that the Chayes-Machta dynamics for the mean-field random-cluster model at criticality mixes in nearly logarithmic time, showing no exponential slowdown, and introduces new techniques for analyzing such Markov chains.
Contribution
It provides the first nearly tight bound on the mixing time of the mean-field Chayes-Machta dynamics at criticality, using a novel multi-phased coupling approach.
Findings
Mixing time is O(log n * log log n) at criticality.
No exponential slowdown occurs at the phase transition.
New bounds improve understanding of local Glauber dynamics in mean-field models.
Abstract
The random-cluster model is a unifying framework for studying random graphs, spin systems and electrical networks that plays a fundamental role in designing efficient Markov Chain Monte Carlo (MCMC) sampling algorithms for the classical ferromagnetic Ising and Potts models. In this paper, we study a natural non-local Markov chain known as the Chayes-Machta dynamics for the mean-field case of the random-cluster model, where the underlying graph is the complete graph on vertices. The random-cluster model is parametrized by an edge probability and a cluster weight . Our focus is on the critical regime: and , where is the threshold corresponding to the order-disorder phase transition of the model. We show that the mixing time of the Chayes-Machta dynamics is in this parameter regime, which reveals that the dynamics…
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