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Sampling from the Sherrington-Kirkpatrick Gibbs measure via algorithmic stochastic localization

Published 10 Mar 2022 in math.PR, cond-mat.dis-nn, and cs.DS | (2203.05093v2)

Abstract: We consider the Sherrington-Kirkpatrick model of spin glasses at high-temperature and no external field, and study the problem of sampling from the Gibbs distribution $\mu$ in polynomial time. We prove that, for any inverse temperature $\beta<1/2$, there exists an algorithm with complexity $O(n2)$ that samples from a distribution $\mu{alg}$ which is close in normalized Wasserstein distance to $\mu$. Namely, there exists a coupling of $\mu$ and $\mu{alg}$ such that if $(x,x{alg})\in{-1,+1}n\times {-1,+1}n$ is a pair drawn from this coupling, then $n{-1}\mathbb E{||x-x{alg}||_22}=o_n(1)$. The best previous results, by Bauerschmidt and Bodineau and by Eldan, Koehler, and Zeitouni, implied efficient algorithms to approximately sample (under a stronger metric) for $\beta<1/4$. We complement this result with a negative one, by introducing a suitable "stability" property for sampling algorithms, which is verified by many standard techniques. We prove that no stable algorithm can approximately sample for $\beta>1$, even under the normalized Wasserstein metric. Our sampling method is based on an algorithmic implementation of stochastic localization, which progressively tilts the measure $\mu$ towards a single configuration, together with an approximate message passing algorithm that is used to approximate the mean of the tilted measure.

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