Max-SAT的分支和界解的局部最大分辨率

André Abramé, Djamal Habet
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引用次数: 9

摘要

分支定界法求解Max-SAT最关键的组成部分之一是下界的估计。在搜索树的每个节点上,通过基于单位传播的方法检测公式的不一致子集(IS),并对其进行处理。根据IS的结构,目前表现最好的BnB解算器通过几个最大分辨率步骤对它们进行转换,并将更改保留在子树的子部分中,或者简单地从公式中删除这些子集的子句并在下一次决策之前恢复它们。最后处理后得到的公式不等于原来的公式,可以减少可检测到的剩余不一致的数量。在本文中,我们提出利用最大分辨率推理规则在搜索树的当前节点局部变换来充分利用所有不一致子集,而不是应用这种移除。这种转换的预期好处是准确的下限估计和减少解决实例所需的决策数量。我们通过实验证明了我们的方法对加权和未加权的Max-SAT实例的兴趣,并讨论了得到的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local Max-Resolution in Branch and Bound Solvers for Max-SAT
One of the most critical components of Branch & Bound (BnB) solvers for Max-SAT is the estimation of the lower bound. At each node of the search tree, they detect inconsistent subsets (IS) of the formula by unit propagation based methods and apply a treatment on them. Depending on the structure of the IS, current best performing BnB solvers transform them by several max-resolution steps and keep the changes in the sub-part of the sub tree or simply remove the clauses of these subsets from the formula and restore them before the next decision. The formula obtained after this last treatment is not equivalent to the original one and the number of detectable remaining inconsistencies may be reduced. In this paper, instead of applying such a removal, we propose to fully exploit all the inconsistent subsets by applying the well-known max-resolution inference rule to transform them locally in the current node of the search tree. The expected benefits of this transformation are an accurate lower bound estimation and the reduction of the number of decisions needed to solve an instance. We show experimentally the interest of our approach on weighted and unweighted Max-SAT instances and discuss the obtained results.
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