Improved Inapproximability Results for Counting Independent Sets in the Hard-Core Model
Andreas Galanis, Qi Ge, Daniel Stefankovic, Eric Vigoda, Linji Yang

TL;DR
This paper advances the understanding of the computational difficulty of approximately counting independent sets in graphs within the hard-core model, establishing new inapproximability bounds for various degrees and activity parameters.
Contribution
It removes previous upper bounds on the activity parameter for inapproximability results, extending Sly's results to more degrees and refining the analysis of independent sets in random regular graphs.
Findings
No efficient randomized approximation algorithms for lambda > lambda_c(Tree_Delta) when Delta=3 and Delta>=6.
Improved the technical analysis of independent sets in random regular graphs.
Extended inapproximability results to new ranges of parameters and degrees.
Abstract
We study the computational complexity of approximately counting the number of independent sets of a graph with maximum degree Delta. More generally, for an input graph G=(V,E) and an activity lambda>0, we are interested in the quantity Z_G(lambda) defined as the sum over independent sets I weighted as w(I) = lambda^|I|. In statistical physics, Z_G(lambda) is the partition function for the hard-core model, which is an idealized model of a gas where the particles have non-negibile size. Recently, an interesting phase transition was shown to occur for the complexity of approximating the partition function. Weitz showed an FPAS for the partition function for any graph of maximum degree Delta when Delta is constant and lambda< lambda_c(Tree_Delta):=(Delta-1)^(Delta-1)/(Delta-2)^Delta. The quantity lambda_c(Tree_Delta) is the critical point for the so-called uniqueness threshold on the…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Stochastic processes and statistical mechanics · Complexity and Algorithms in Graphs
