Exploiting Cardinality Encodings in Parallel Maximum Satisfiability

R. Martins, Vasco M. Manquinho, I. Lynce
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引用次数: 27

Abstract

Cardinality constraints appear in many practical problems and have been well studied in the past. There are many CNF encodings for cardinality constraints, although it is not clear which encodings perform better. Indeed, different encodings can perform well over different problems. This paper examines a large number of cardinality encodings and evaluates their performance for solving the problem of Maximum Satisfiability (MaxSAT). Taking advantage of the diversification of cardinality encodings, we propose to exploit those encodings in parallel MaxSAT solving. Our parallel solver, pMAX, simultaneously searches in the lower and upper bound of the optimum value, and different cardinality encodings are used in each thread to increase the diversification of the search. Moreover, learned clauses are shared between threads during the search. Experimental results show that our parallel solver outperforms other sequential and parallel state-of-the-art MaxSAT solvers.
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利用并行最大可满足性中的基数编码
基数约束出现在许多实际问题中,并在过去得到了很好的研究。有许多CNF编码用于基数约束,尽管不清楚哪种编码性能更好。实际上,不同的编码可以在不同的问题上表现良好。本文研究了大量的基数编码,并评价了它们在解决最大可满足性(MaxSAT)问题中的性能。利用基数编码的多样性,我们建议在并行MaxSAT求解中利用这些编码。我们的并行求解器pMAX同时搜索最优值的下界和上界,并且在每个线程中使用不同的基数编码来增加搜索的多样化。此外,在搜索过程中,学习到的子句在线程之间共享。实验结果表明,我们的并行求解器优于其他串行和并行最先进的MaxSAT求解器。
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