STOC2025

Counting Random k-SAT near the Satisfiability Threshold

Zongchen Chen, Aditya Lonkar, Chunyang Wang, Kuan Yang, Yitong Yin

被引用 2 次

摘要

We present efficient counting and sampling algorithms for random kk-SAT when the clause density satisfies α2kpoly(k).α\le \frac{2^k}{\mathrm{poly}(k)}. In particular, the exponential term 2k2^k matches the satisfiability threshold Θ(2k)Θ(2^k) for the existence of a solution and the (conjectured) algorithmic threshold 2k(lnk)/k2^k (\ln k) / k for efficiently finding a solution. Previously, the best-known counting and sampling algorithms required far more restricted densities α2k/3α\lesssim 2^{k/3} [He, Wu, Yang, SODA '23]. Notably, our result goes beyond the lower bound d2k/2d\gtrsim 2^{k/2} for worst-case kk-SAT with bounded-degree dd [Bezáková et al, SICOMP '19], showing that for counting and sampling, the average-case random kk-SAT model is computationally much easier than the worst-case model. At the heart of our approach is a new refined analysis of the recent novel coupling procedure by [Wang, Yin, FOCS '24], utilizing the structural properties of random constraint satisfaction problems (CSPs). Crucially, our analysis avoids reliance on the 22-tree structure used in prior works, which cannot extend beyond the worst-case threshold 2k/22^{k/2}. Instead, we employ a witness tree similar to that used in the analysis of the Moser-Tardos algorithm [Moser, Tardos, JACM '10] for the Lovász Local lemma, which may be of independent interest. Our new analysis provides a universal framework for efficient counting and sampling for random atomic CSPs, including, for example, random hypergraph colorings. At the same time, it immediately implies as corollaries several structural and probabilistic properties of random CSPs that have been widely studied but rarely justified, including replica symmetry and non-reconstruction.