Improved Mixing of Critical Hardcore Model
Journal:
arXiv
Published Date:
May 12, 2025
Abstract
The hardcore model is one of the most classic and widely studied examples of
undirected graphical models. Given a graph $G$, the hardcore model describes a
Gibbs distribution of $\lambda$-weighted independent sets of $G$. In the last
two decades, a beautiful computational phase transition has been established at
a precise threshold $\lambda_c(\Delta)$ where $\Delta$ denotes the maximum
degree, where the task of sampling independent sets transfers from
polynomial-time solvable to computationally intractable. We study the critical
hardcore model where $\lambda = \lambda_c(\Delta)$ and show that the Glauber
dynamics, a simple yet popular Markov chain algorithm, mixes in
$\tilde{O}(n^{7.44 + O(1/\Delta)})$ time on any $n$-vertex graph of maximum
degree $\Delta\geq3$, significantly improving the previous upper bound
$\tilde{O}(n^{12.88+O(1/\Delta)})$ by the recent work arXiv:2411.03413. The
core property we establish in this work is that the critical hardcore model is
$O(\sqrt{n})$-spectrally independent, improving the trivial bound of $n$ and
matching the critical behavior of the Ising model. Our proof approach utilizes
an online decision-making framework to study a site percolation model on the
infinite $(\Delta-1)$-ary tree, which can be interesting by itself.