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FGMAC: Frequent subgraph mining with Arc Consistency

机译:FGMAC:具有弧一致性的频繁子图挖掘

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With the important growth of requirements to analyze large amount of structured data such as chemical compounds, proteins structures, XML documents, to cite but a few, graph mining has become an attractive track and a real challenge in the data mining field. Among the various kinds of graph patterns, frequent subgraphs seem to be relevant in characterizing graphsets, discriminating different groups of sets, and classifying and clustering graphs. Because of the NP-Completeness of subgraph isomorphism test as well as the huge search space, fragment miners are exponential in runtime and/or memory consumption. In this paper we study a new polynomial projection operator named AC-Projection based on a key technique of constraint programming namely Arc Consistency (AC). This is intended to replace the use of the exponential subgraph isomorphism. We study the relevance of frequent AC-reduced graph patterns on classification and we prove that we can achieve an important performance gain without or with non-significant loss of discovered pattern's quality.
机译:随着分析大量结构化数据(例如化学化合物,蛋白质结构,XML文档)的需求不断增加(仅举几例),图挖掘已成为数据挖掘领域中的一个有吸引力的领域和一个真正的挑战。在各种图形模式中,频繁的子图似乎与表征图形集,区分不同组的集合以及对图形进行分类和聚类有关。由于子图同构测试的NP完整性以及巨大的搜索空间,片段挖掘器的运行时间和/或内存消耗呈指数级增长。在本文中,我们基于一种约束编程的关键技术,即弧一致性(AC),研究了一种称为AC-Projection的新多项式投影算子。这旨在代替使用指数子图同构。我们研究了频繁使用AC缩减的图形模式与分类的相关性,并证明了在不增加或不减少所发现模式质量的情况下,我们可以实现重要的性能提升。

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