Local search algorithms are well-known methods for solving large, hard instances of the satisfiability problem (SAT). The performance of these algorithms crucially depends on heuristics for setting noise parameters and scoring variables. The optimal setting for these heuristics varies for different instance distributions. In this paper, we present an approach for learning effective variable scoring functions and noise parameters by using reinforcement learning. We consider satisfiability problems from different instance distributions and learn specialized heuristics for each of them. Our experimental results show improvements with respect to both a WalkSAT baseline and another local search learned heuristic.
Dettaglio pubblicazione
2023, Proceedings of the International Conference on Knowledge Representation and Reasoning, Pages 365-373
Learning Interpretable Heuristics for WalkSAT (04b Atto di convegno in volume)
Interian Y., Bernardini S.
ISBN: 9781956792027
Gruppo di ricerca: Artificial Intelligence and Robotics
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