The Lov\'{a}sz Local Lemma is Not About Probability
Dimitris Achlioptas, Kostas Zampetakis

TL;DR
This paper introduces a hierarchy of non-local lemmata for bounding avoidance probabilities, surpassing local bounds, and extends Shearer's criterion to supermodular functions, impacting statistical physics and quantum information.
Contribution
Develops a hierarchy of non-local lemmata for better bounds and generalizes Shearer's criterion to supermodular functions beyond probability measures.
Findings
Hierarchy surpasses all known local lemmata at its second level
Provides new bounds for the negative-fugacity singularity in the hard-core model
Extends Shearer's connection to supermodular functions, including quantum cases
Abstract
Given a collection of independent events each of which has strictly positive probability, the probability that all of them occur is also strictly positive. The Lov\'asz local lemma (LLL) asserts that this remains true if the events are not too strongly negatively correlated. The formulation of the lemma involves a graph with one vertex per event, with edges indicating potential negative dependence. The word "Local" in LLL reflects that the condition for the negative correlation can be expressed solely in terms of the neighborhood of each vertex. In contrast to this local view, Shearer developed an exact criterion for the avoidance probability to be strictly positive, but it involves summing over all independent sets of the graph. In this work we make two contributions. The first is to develop a hierarchy of increasingly powerful, increasingly non-local lemmata for bounding the…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Theoretical and Computational Physics · Complexity and Algorithms in Graphs
