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On Balanced CSPs with High Treewidth

机译:在具有高树宽的平衡CSP上

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Tractable cases of the binary CSP are mainly divided in two classes: constraint language restrictions and constraint graph restrictions. To better understand and identify the hardest binary CSPs, in this work we propose methods to increase their hardness by increasing the balance of both the constraint language and the constraint graph. The balance of a constraint is increased by maximizing the number of domain elements with the same number of occurrences. The balance of the graph is defined using the classical definition from graph theory. In this sense we present two graph models; a first graph model that increases the balance of a graph maximizing the number of vertices with the same degree, and a second one that additionally increases the girth of the graph, because a high girth implies a high treewidth, an important parameter for binary CSPs hardness. Our results show that our more balanced graph models and constraints result in harder instances when compared to typical random binary CSP instances, by several orders of magnitude. Also we detect, at least for sparse constraint graphs, a higher treewidth for our graph models.
机译:二进制CSP的易诊例主要分为两类:约束语言限制和约束图限制。为了更好地理解和识别最难的二进制CSP,在这项工作中,我们提出了通过增加约束语言和约束图的平衡来提高其硬度的方法。通过最大化具有相同数量的出现数量的域元素的数量来增加约束的平衡。使用图形理论的经典定义定义了图形的平衡。在这个意义上,我们提供了两个图形模型;提高图形的第一个图形模型,最大化具有相同程度的顶点的数量,以及另外增加图形的束缚的第二个图形模型,因为高长呈现出高树宽度,这是二进制CSP硬度的重要参数。我们的结果表明,与典型随机二进制CSP实例相比,我们更具平衡的图形模型和约束导致更难的实例,其数量级。此外,我们至少检测到稀疏约束图,是我们图形模型的更高的树宽。

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