Information percolation and cutoff for the stochastic Ising model

Author:

Lubetzky Eyal,Sly Allan

Abstract

We introduce a new framework for analyzing Glauber dynamics for the Ising model. The traditional approach for obtaining sharp mixing results has been to appeal to estimates on spatial properties of the stationary measure from within a multi-scale analysis of the dynamics. Here we propose to study these simultaneously by examining “information percolation” clusters in the space-time slab.

Using this framework, we obtain new results for the Ising model on ( Z / n Z ) d (\mathbb Z/n\mathbb Z)^d throughout the high temperature regime: total-variation mixing exhibits cutoff with an O ( 1 ) O(1) -window around the time at which the magnetization is the square root of the volume. (Previously, cutoff in the full high temperature regime was only known in dimensions d 2 d\leq 2 , and only with an O ( log log n ) O(\log \log n) -window.)

Furthermore, the new framework opens the door to understanding the effect of the initial state on the mixing time. We demonstrate this on the 1D Ising model, showing that starting from the uniform (“disordered”) initial distribution asymptotically halves the mixing time, whereas almost every deterministic starting state is asymptotically as bad as starting from the (“ordered”) all-plus state.

Publisher

American Mathematical Society (AMS)

Subject

Applied Mathematics,General Mathematics

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1. Low-temperature Ising dynamics with random initializations;The Annals of Applied Probability;2023-10-01

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5. Low-temperature Ising dynamics with random initializations;Proceedings of the 54th Annual ACM SIGACT Symposium on Theory of Computing;2022-06-09

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