反单调重叠图的支持措施

T. Calders, J. Ramon, D. V. Dyck
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引用次数: 23

摘要

在图挖掘中,如果模式的频率从不超过子模式的频率,则频率度量是反单调的。大多数图模式挖掘器的效率和正确性主要依赖于这一特性。我们研究数据集是单个图的情况。Vanetik, Gudes和Shimony已经给出了仅依赖于标记图中模式实例之间的边重叠的测度的反单调性的充要条件。我们将这些结果推广到有标记图和无标记图,有向图和无向图上的同态、同构和同胚,对于顶点和边缘重叠。我们展示了一组保留重叠的不同多态性之间的还原。我们还证明了常用的最大独立集测度分配了最小可能有意义频率,引入了一种基于最小团划分分配最大可能有意义频率的新测度,并引入了一种夹在前两者之间的基于多时间可计算Lovasz - thetas函数的新测度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anti-monotonic Overlap-Graph Support Measures
In graph mining, a frequency measure is anti-monotonic if the frequency of a pattern never exceeds the frequency of a subpattern. The efficiency and correctness of most graph pattern miners relies critically on this property. We study the case where the dataset is a single graph. Vanetik, Gudes and Shimony already gave sufficient and necessary conditions for anti-monotonicity of measures depending only on the edge-overlaps between the instances of the pattern in a labeled graph. We extend these results to homomorphisms, isomorphisms and homeomorphisms on both labeled and unlabeled, directed and undirected graphs, for vertex and edge overlap. We show a set of reductions between the different morphisms that preserve overlap. We also prove that the popular maximum independent set measure assigns the minimal possible meaningful frequency, introduce a new measure based on the minimum clique partition that assigns the maximum possible meaningful frequency and introduce a new measure sandwiched between the former two based on the poly-time computable Lovasz thetas-function.
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