Planting and MCMC Sampling from the Potts model
Andreas Galanis, Leslie Ann Goldberg, Paulina Smolarova

TL;DR
This paper develops a new analysis of the Potts model and random-cluster dynamics, demonstrating fast mixing of sampling algorithms beyond the known thresholds for all integer q,d ≥ 3, using planting techniques.
Contribution
It introduces a novel analysis combining planting with random-cluster dynamics to achieve fast sampling beyond the metastability threshold for all q,d ≥ 3.
Findings
Fast mixing of random-cluster dynamics beyond the threshold β_u
Analysis valid for all integer q,d ≥ 3
Refined algorithm in the ordered regime β > β_c
Abstract
We consider the problem of sampling from the ferromagnetic -state Potts model on the random -regular graph with parameter . A key difficulty that arises in sampling from the model is the existence of a metastability window where the distribution has two competing modes, the so-called disordered and ordered phases, causing MCMC-based algorithms to be slow mixing from worst-case initialisations. To this end, Helmuth, Jenssen and Perkins designed a sampling algorithm that works for all when is large, using cluster expansion methods; more recently, their analysis technique has been adapted to show that random-cluster dynamics mixes fast when initialised more judiciously. However, a bottleneck behind cluster-expansion arguments is that they inherently only work for large , whereas it is widely conjectured that sampling is possible for all…
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