过约束csp的有效松弛

Carlos Mencía, Joao Marques-Silva
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引用次数: 12

摘要

约束规划正在成为各种应用领域的首选求解技术。发现CSP对某些现实问题的建模不可行或过度约束是很常见的。在此场景中,用户可能对确定导致不一致的原因感兴趣,或者对获得一些建议感兴趣,以便他们可以重新表述他们的问题以使其可行。后一个问题在过约束问题的分析中起着非常重要的作用。具体地,我们研究了从不可行的csp中计算约束的最小排除集(MESC)的问题。MESC是约束的最小集合,它的移除使原问题变得可行。我们概述了MESC提取的现有技术,并考虑了其他替代方案和优化。我们的主要贡献是适应了SAT在CSP中工作的最佳性能算法之一。我们还集成了一种提高效率的技术。一项实验研究的结果表明,与最先进的技术相比,有了相当大的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Relaxations of Over-constrained CSPs
Constraint Programming is becoming the preferred solving technology in a variety of application domains. It is not unusual that a CSP modeling some real-life problem is found to be unfeasible or over-constrained. In this scenario, users may be interested in identifying the causes responsible for inconsistency, or in getting some advice so that they can reformulate their problem to render it feasible. This paper is concerned with the latter issue, which plays a very important role in the analysis of over-constrained problems. Concretely, we study the problem of computing a minimal exclusion set of constraints (MESC) from unfeasible CSPs. A MESC is a set-wise minimal set of constraints whose removal makes the original problem feasible. We provide an overview of existing techniques for MESC extraction and consider additional alternatives and optimizations. Our main contribution is the adaptation of one of the best-performing algorithms for SAT to work in CSP. We also integrate a technique that improves its efficiency. The results from an experimental study indicate considerable improvements over the state-of-the-art.
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