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Efficient Recognition of Acyclic Clustered Constraint Satisfaction Problems

机译:非循环聚类约束满足问题的有效识别

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摘要

In this paper we present a novel approach to solving Constraint Satisfaction Problems whose constraint graphs are highly clustered and the graph of clusters is close to being acyclic. Such graphs are encountered in many real world application domains such as configuration, diagnosis, model-based reasoning and scheduling. We present a class of variable ordering heuristics that exploit the clustered structure of the constraint network to inform search. We show how these heuristics can be used in conjunction with nogood learning to develop efficient solvers that can exploit propagation based on either forward checking or maintaining arc-consistency algorithms. Experimental results show that maintaining arc-consistency alone is not competitive with our approach, even if nogood learning and a well known variable ordering are incorporated. It is only by using our cluster-based heuristics can large problems be solved efficiently. The poor performance of maintaining arc-consistency is somewhat surprising, but quite easy to explain.
机译:在本文中,我们提出了一种解决约束满足问题的新方法,该约束满足问题的约束图高度聚类,并且聚类图接近于无环。在许多实际应用领域中都会遇到这样的图,例如配置,诊断,基于模型的推理和调度。我们提出了一类变量排序试探法,该方法利用约束网络的聚类结构来通知搜索。我们展示了如何将这些启发式方法与不好的学习方法结合使用,以开发有效的求解器,该求解器可以基于前向检查或维持弧一致性算法来利用传播。实验结果表明,即使没有良好的学习方法和众所周知的变量排序,仅保持电弧一致性也无法与我们的方法竞争。只有使用我们基于集群的启发式方法,才能有效地解决大问题。保持电弧一致性的性能差有些令人惊讶,但很容易解释。

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