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A Study of Local Minimum Avoidance Heuristics for SAT

机译:饱和人的局部最小避税启发式

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Stochastic local search for satisfiability (SAT) has successfully been applied to solve a wide range of problems. However, it still suffers from a major shortcoming, i.e. being trapped in local minima. In this study, we explore different heuristics to avoid local minima. The main idea is to proactively avoid local minima rather than reactively escape from them. This is worthwhile because it is time consuming to successfully escape from a local minimum in a deep and wide valley. In addition, revisiting an encountered local minimum several times makes it worse. Our new trap avoidance heuristics that operate in two phases: (i) learning of pseudo-conflict information at each local minimum, and (ii) using this information to avoid revisiting the same local minimum. We present a detailed empirical study of different strategies to collect pseudo-conflict information (using either static or dynamic heuristics) as well as to forget the outdated information (using naive or time window smoothing). We select a benchmark suite that includes all random and structured instances used in the 2011 SAT competition and three sets of hardware and software verification problems. Our results show that the new heuristics significantly outperform existing stochastic local search solvers (including Sparrow2011 - the best local search solver for random instances in the 2011 SAT competition) on all tested benchmarks.
机译:随机本地搜索可满足性(SAT)已成功应用于解决广泛的问题。然而,它仍然存在重大缺点,即被困在当地最小值。在这项研究中,我们探讨了不同的启发式,以避免当地最小值。主要思想是主动避免局部最小值,而不是反应地逃离它们。这是值得的,因为成功逃离了深层和宽阔的山谷中的局部最小值是耗时的。此外,重新审视遇到的局部至少几次使其变得更糟。我们的新陷阱避免启发式,以两个阶段运行:(i)使用此信息学习每个本地最小值的伪冲突信息,并使用此信息来避免重新审视相同的本地最低限度。我们提供了对不同策略的详细实证研究,以收集伪冲突信息(使用静态或动态启发式)以及忘记过时的信息(使用Naive或Time Window Smoothing)。我们选择一个基准套件,包括2011年SAT竞争中使用的所有随机和结构化实例,以及三组硬件和软件验证问题。我们的研究结果表明,新的启发式明显优于现有的随机本地搜索求解器(包括Sparrow2011 - 在所有测试的基准测试中,在2011年SAT竞争中最佳本地搜索解决者)。

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