Improved Bounds for Sampling Solutions of Random CNF Formulas
July 25, 2022 Β· Declared Dead Β· π ACM-SIAM Symposium on Discrete Algorithms
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Authors
Kun He, Kewen Wu, Kuan Yang
arXiv ID
2207.11892
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DM,
math.PR
Citations
12
Venue
ACM-SIAM Symposium on Discrete Algorithms
Last Checked
3 months ago
Abstract
Let $Ξ¦$ be a random $k$-CNF formula on $n$ variables and $m$ clauses, where each clause is a disjunction of $k$ literals chosen independently and uniformly. Our goal is to sample an approximately uniform solution of $Ξ¦$ (or equivalently, approximate the partition function of $Ξ¦$). Let $Ξ±=m/n$ be the density. The previous best algorithm runs in time $n^{\mathsf{poly}(k,Ξ±)}$ for any $Ξ±\lesssim2^{k/300}$ [Galanis, Goldberg, Guo, and Yang, SIAM J. Comput.'21]. Our result significantly improves both bounds by providing an almost-linear time sampler for any $Ξ±\lesssim2^{k/3}$. The density $Ξ±$ captures the \emph{average degree} in the random formula. In the worst-case model with bounded \emph{maximum degree}, current best efficient sampler works up to degree bound $2^{k/5}$ [He, Wang, and Yin, FOCS'22 and SODA'23], which is, for the first time, superseded by its average-case counterpart due to our $2^{k/3}$ bound. Our result is the first progress towards establishing the intuition that the solvability of the average-case model (random $k$-CNF formula with bounded average degree) is better than the worst-case model (standard $k$-CNF formula with bounded maximal degree) in terms of sampling solutions.
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