Optimizing backbone filtering

Yueling Zhang, Jianwen Li, Min Zhang, G. Pu, Fu Song
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引用次数: 6

Abstract

Backbone is the common part of each solution in a given propositional formula, which is a key to improving the performance of SAT solving and SAT-based applications, such as model checking and program analysis. In this paper, we propose an optimized approach that combines implication-driven (IDF), conflict-driven (CDF), and unique-driven (UDF) heuristics to improve backbone computing. IDF uses the particular binary structure of the form a ↔ b ∧ c to find more backbone literals. CDF comes from the observation that for a clause ¬a ∨ b, if a is a backbone literal, then b is also a backbone literal. Besides CDF, we are also able to detect new non-backbone literals by UDF. A literal l is not a backbone literal, if there is no clause Φ ∊ Φ that is only satisfied by l. We implemented our approach in a tool named DUCIBone with the above optimizations (IDF+CDF+UDF), and conducted experiments on formulas used in previous work and SAT competitions (2015, 2016). Results demonstrate that DUCIBone solved 4% (507 formulas) more formulas than minibones (minibones-RLD, 490 formulas) does under its best configuration. Among 486 formulas solved by all tools (DUCIBone, minibones-RLD, minibonescb100), DUCIBone reduced 7% (35131 seconds) than minibones (37454 seconds). Experiments indicate that the advantage of DUCIBone is more obvious when the formulas are harder.
优化骨干过滤
主干是给定命题公式中每个解的公共部分,它是提高SAT求解和基于SAT的应用(如模型检查和程序分析)性能的关键。在本文中,我们提出了一种优化的方法,结合了隐含驱动(IDF)、冲突驱动(CDF)和唯一驱动(UDF)的启发式来改进骨干计算。IDF使用形式为a↔b∧c的特殊二进制结构来查找更多的主干字面值。CDF来自于这样的观察:对于a子句¬a∨b,如果a是主干文字,那么b也是主干文字。除了CDF,我们还可以通过UDF检测新的非骨干字面值。如果字面量l不存在仅由l满足的子句Φ Φ,那么字面量l就不是主干字面量。我们在名为DUCIBone的工具中使用上述优化(IDF+CDF+UDF)实现了我们的方法,并对先前工作和SAT竞赛(2015年,2016年)中使用的公式进行了实验。结果表明:在最佳配置下,DUCIBone比minibones (minibones- rld, 490公式)多求解4%(507个公式)。在所有工具(DUCIBone、minibones- rld、minibonescb100)求解的486个公式中,DUCIBone比minibones(37454秒)缩短了7%(35131秒)。实验表明,公式越难,DUCIBone的优势越明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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