Fast sampling of satisfying assignments from random $k$-SAT with applications to connectivity
Zongchen Chen, Andreas Galanis, Leslie Ann Goldberg, Heng Guo,, Andr\'es Herrera-Poyatos, Nitya Mani, Ankur Moitra

TL;DR
This paper presents a nearly linear-time algorithm for approximately sampling satisfying assignments in random $k$-SAT formulas at high densities, significantly improving previous methods and enabling analysis of solution space connectivity.
Contribution
The authors develop a fast sampling algorithm for high-density random $k$-SAT using spectral independence and influence bounds, handling high-degree variables effectively.
Findings
Sampling up to density $2^{0.039k}$ in nearly linear time
Existence of a giant connected component of solutions at certain densities
Looseness results for random $k$-CNF formulas in the same regime
Abstract
We give a nearly linear-time algorithm to approximately sample satisfying assignments in the random -SAT model when the density of the formula scales exponentially with . The best previously known sampling algorithm for the random -SAT model applies when the density of the formula is less than and runs in time . Here is the number of variables and is the number of clauses. Our algorithm achieves a significantly faster running time of and samples satisfying assignments up to density . The main challenge in our setting is the presence of many variables with unbounded degree, which causes significant correlations within the formula and impedes the application of relevant Markov chain methods from the bounded-degree setting. Our main technical contribution is a bound of…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Markov Chains and Monte Carlo Methods · Optimization and Search Problems
