Diversification by Clauses Deletion Strategies in Portfolio Parallel SAT Solving

ICTAI(2014)

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摘要
Conflict based clause learning is known to be an important component in Modern SAT solving. Because of the exponential blow up of the size of learnt clauses database, maintaining a relevant and polynomially bounded set of learnt clauses is crucial for the efficiency of clause learning based SAT solvers. In this paper, we first compare several criteria for selecting the most relevant learnt clauses with a simple random selection strategy. We then propose new criteria allowing us to select relevant clauses w.r.t. A given search state. Then, we use such strategies as a means to diversify the search in a portfolio based parallel solver. An experimental evaluation comparing the classical Many SAT solver with the one augmented with multiple deletion strategies, shows the interest of such approach.
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关键词
lause learning,portfolio parallel sat solving,satisfiability, lause learning, parallel-sat,learning (artificial intelligence),conflict based clause learning,diversification,random selection strategy,computability,parallel-sat,satisfiability,clauses deletion strategy,clause learning based sat solver,learnt clauses database,portfolio based parallel solver
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