Entropic Independence II: Optimal Sampling and Concentration via Restricted Modified Log-Sobolev Inequalities
Nima Anari, Vishesh Jain, Frederic Koehler, Huy Tuan Pham, Thuy-Duong, Vuong

TL;DR
This paper introduces a new framework using restricted modified log-Sobolev inequalities to achieve nearly-linear mixing times for sampling from complex models like the hardcore and Ising models, even on high-degree graphs.
Contribution
It develops a novel approach to establish entropy contraction near stationarity, leading to optimal mixing time bounds independent of maximum degree.
Findings
Achieves nearly-linear time sampling for hardcore and Ising models with a constant gap to the tree-uniqueness threshold.
Improves prior mixing time bounds that depended on maximum degree or were quadratic in n.
Extends entropic independence to spectrally independent distributions under restricted external fields.
Abstract
We introduce a framework for obtaining tight mixing times for Markov chains based on what we call restricted modified log-Sobolev inequalities. Modified log-Sobolev inequalities (MLSI) quantify the rate of relative entropy contraction for the Markov operator, and are notoriously difficult to establish. However, infinitesimally close to stationarity, entropy contraction becomes equivalent to variance contraction, a.k.a. a Poincare inequality, which is significantly easier to establish through, e.g., spectral analysis. Motivated by this observation, we study restricted modified log-Sobolev inequalities that guarantee entropy contraction not for all starting distributions, but for those in a large neighborhood of the stationary distribution. We show how to sample from the hardcore and Ising models on -node graphs that have a constant relative gap to the tree-uniqueness…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Statistical Methods and Inference
