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Fast mixing in Ising models with a negative spectral outlier via Gaussian approximation

Published 28 Dec 2025 in math.PR, cs.DS, and math-ph | (2512.22803v1)

Abstract: We study the mixing time of Glauber dynamics for Ising models in which the interaction matrix contains a single negative spectral outlier. This class includes the anti-ferromagnetic Curie-Weiss model, the anti-ferromagnetic Ising model on expander graphs, and the Sherrington-Kirkpatrick model with disorder of negative mean. Existing approaches to rapid mixing rely crucially on log-concavity or spectral width bounds and therefore can break down in the presence of a negative outlier. To address this difficulty, we develop a new covariance approximation method based on Gaussian approximation. This method is implemented via an iterative application of Stein's method to quadratic tilts of sums of bounded random variables, which may be of independent interest. The resulting analysis provides an operator-norm control of the full correlation structure under arbitrary external fields. Combined with the localization schemes of Eldan and Chen, these estimates lead to a modified logarithmic Sobolev inequality and near-optimal mixing time bounds in regimes where spectral width bounds fail. As a complementary result, we prove exponential lower bounds on the mixing time for low temperature anti-ferromagnetic Ising models on sparse Erdös-Rényi graphs, based on the existence of gapped states as in the recent work of Sellke.

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