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Improving Implementation of SLS Solvers for SAT and New Heuristics for k-SAT with Long Clauses

机译:改善SLS求解器的SAT和新的启发式储存k-sat与长条款

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Stochastic Local Search (SLS) solvers are considered one of the best solving technique for randomly generated problems and more recently also have shown great promise for several types of hard combinatorial problems. Within this work, we provide a thorough analysis of different implementation variants of SLS solvers on random and on hard combinatorial problems. By analyzing existing SLS implementations, we are able to discover new improvements inspired by CDCL solvers, which can speed up the search of all types of SLS solvers. Further, our analysis reveals that the multilevel break values of variables can be easily computed and used within the decision heuristic. By augmenting the probSAT solver with the new heuristic, we are able to reach new state-of-the-art performance on several types of SAT problems, especially on those with long clauses. We further provide a detailed analysis of the clause selection policy used in focused search SLS solvers.
机译:随机本地搜索(SLS)求解器被认为是随机产生的问题的最佳解决技术之一,并且最近也为几种类型的硬组合问题表示了很大的承诺。在这项工作中,我们在随机和硬组合问题上对SLS求解器的不同实施变体进行了彻底的分析。通过分析现有的SLS实现,我们能够发现CDCL解码器启发的新改进,可以加快搜索所有类型的SLS求解器。此外,我们的分析表明,可以在决策启发式中轻松计算和使用变量的多级断裂值。通过使用新的启发式增强Probsat求解器,我们能够在几种类型的SAT问题上达到新的最先进的性能,特别是在长条款中的那些。我们还提供了对聚焦搜索SLS求解器中使用的子句选择策略的详细分析。

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