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Constraint Metrics for Local Search

机译:用于本地搜索的约束度量

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Over the years, a steadily improving series of local search solvers for propositional satisfiability (SAT) have been constructed. However, these solvers are often fragile, in that they have apparently minor details in their implementation that dramatically affect performance and confound understanding. In order to understand and predict the success of differing strategies, various local search metrics have been proposed. Many of these metrics summarize properties of the boolean assignments examined during the search. This has two consequences: first, they only capture one side of satisfiability, failing to characterize the behaviour with respect to constraints. Secondly, the boolean requirement limits the applicability of these metrics to more general constraint satisfaction problems (CSPs), which can have non-boolean domains. In response, we present dual metrics, derived from existing primal (boolean assignment) metrics, that are based on the states of constraints during the search. Experimental results show a strong relationship between the primal and dual versions of these metrics on a variety of random and structured problems. This dual perspective can be easily applied to both SAT and general CSPs, allowing for new insights into the workings of a broad class of local search methods.
机译:多年来,已经建立了一个稳定改善的局部搜索求解器,用于命题可满足(SAT)。然而,这些求解器通常是脆弱的,因为他们在其实施中显然有了较小的细节,从而显着影响性能和混淆的理解。为了理解和预测不同策略的成功,已经提出了各种本地搜索度量。这些指标中的许多指标总结了在搜索期间检查的布尔分配的属性。这有两种后果:首先,它们只捕获一个可靠性的一侧,未能表征关于约束的行为。其次,布尔要求将这些度量的适用性限制在更一般的约束满足问题(CSP)中,这可以具有非布尔域。作为响应,我们呈现来自现有原始(布尔分配)度量的双重指标,其基于搜索期间的约束状态。实验结果表明,这些指标对各种随机和结构化问题的原始和双重版本之间的良好关系。这种双重视角可以很容易地应用于SAT和一般的CSP,允许新的见解进入广泛的本地搜索方法的工作。

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