Rapid Mixing at the Uniqueness Threshold
November 05, 2024 Β· Declared Dead Β· π Symposium on the Theory of Computing
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Authors
Xiaoyu Chen, Zongchen Chen, Yitong Yin, Xinyuan Zhang
arXiv ID
2411.03413
Category
cs.DS: Data Structures & Algorithms
Cross-listed
math.PR
Citations
11
Venue
Symposium on the Theory of Computing
Last Checked
4 months ago
Abstract
Over the past decades, a fascinating computational phase transition has been identified in sampling from Gibbs distributions. Though, the computational complexity at the critical point remains poorly understood, as previous algorithmic and hardness results all required a constant slack from this threshold. In this paper, we resolve this open question at the critical phase transition threshold, thus completing the picture of the computational phase transition. We show that for the hardcore model on graphs with maximum degree $Ξ\ge 3$ at the uniqueness threshold $Ξ»= Ξ»_c(Ξ)$, the mixing time of Glauber dynamics is upper bounded by a polynomial in $n$, but is not nearly linear in the worst case. For the Ising model (either antiferromagnetic or ferromagnetic), we establish similar results. For the Ising model on graphs with maximum degree $Ξ\ge 3$ at the critical temperature $Ξ²$ where $|Ξ²| = Ξ²_c(Ξ)$, with the tree-uniqueness threshold $Ξ²_c(Ξ)$, we show that the mixing time of Glauber dynamics is upper bounded by $\tilde{O}\left(n^{3 + O(1/Ξ)}\right)$ and lower bounded by $Ξ©\left(n^{3/2}\right)$ in the worst case. For the Ising model specified by a critical interaction matrix $J$ with $\left \lVert J \right \rVert_2=1$, we obtain an upper bound $\tilde{O}(n^{3/2})$ for the mixing time, matching the lower bound $Ξ©\left(n^{3/2}\right)$ on the complete graph up to a logarithmic factor. Our mixing time upper bounds are derived from a new interpretation and analysis of the localization scheme method introduced by Chen and Eldan (2022), applied to the field dynamics for the hardcore model and the proximal sampler for the Ising model. As key steps in both our upper and lower bounds, we establish sub-linear upper and lower bounds for spectral independence at the critical point for worst-case instances.
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