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Boosting MUC extraction in unsatisfiable constraint networks

机译:在不满意的约束网络中促进MUC提取

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摘要

One very fertile domain of applied Artificial Intelligence is constraint solving technologies. Especially, constraint networks that concern problems that can be represented using discrete variables, together with constraints on allowed instantiation values for these variables. Every solution to a constraint network must satisfy every constraint. When no solution exists, the user might want to know the actual reasons leading to the absence of global solution. In this respect, extracting MUCs (Minimal Unsatisfiable Cores) from an unsatisfiable constraint network is a useful process when causes of unsatisfiability must be understood so that the network can be re-engineered and relaxed to become satisfiable. Despite bad worst-case computational complexity results, various MUC-finding approaches that appear tractable for many real-life instances have been proposed. Many of them are based on the successive identification of so-called transition constraints. In this respect, we show how local search can be used to possibly extract additional transition constraints at each main iteration step. In the general constraint networks setting, the approach is shown to outperform a technique based on a form of model rotation imported from the SAT-related technology and that also exhibits additional transition constraints. Our extensive computational experimentations show that this enhancement also boosts the performance of state-of-the-art DC(WCORE)-like MUC extractors.
机译:应用人工智能的一个非常肥沃的领域是约束解决技术。特别是,约束网络涉及可以使用离散变量表示的问题,以及对这些变量的允许实例化值的约束。约束网络的每个解决方案都必须满足每个约束。当不存在解决方案时,用户可能想知道导致缺乏全局解决方案的实际原因。在这方面,当必须了解不满意的原因以便重新设计网络并使其变得可满足时,从不满意的约束网络中提取MUC(最小不满意的核心)是一个有用的过程。尽管最坏情况下的计算复杂性结果不佳,但已经提出了对于许多现实情况似乎易于处理的各种MUC查找方法。其中许多是基于对过渡约束的连续识别。在这方面,我们展示了如何在每个主要迭代步骤使用局部搜索来提取附加的转换约束。在一般约束网络设置中,该方法表现出优于基于SAT相关技术的模型旋转形式的技术,并且还表现出其他过渡约束。我们广泛的计算实验表明,这种增强还提高了类似DC(WCORE)的最先进MUC提取器的性能。

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