STOC2022
Computational thresholds for the fixed-magnetization Ising model
Charlie Carlson, Ewan Davies, Alexandra Kolla, Will Perkins
3 citations
Abstract
The ferromagnetic Ising model is a model of a magnetic material and a central topic in statistical physics. It also plays a starring role in the algorithmic study of approximate counting: approximating the partition function of the ferromagnetic Ising model with uniform external field is tractable at all temperatures and on all graphs, due to the randomized algorithm of Jerrum and Sinclair. Here we show that hidden inside the model are hard computational problems. For the class of bounded-degree graphs we find computational thresholds for the approximate counting and sampling problems for the ferromagnetic Ising model at fixed magnetization (that is, fixing the number of +1 and -1 spins). In particular, letting β c (∆) denote the critical inverse temperature of the zero-field Ising model on the infinite ∆-regular tree, and η + ∆,β,1 denote the mean magnetization of the zero-field + measure on the infinite ∆-regular tree at inverse temperature β, we prove, for the class of graphs of maximum degree ∆: