CLAN:一种从大型密集图数据库中挖掘封闭团的算法

Jianyong Wang, Zhiping Zeng, Lizhu Zhou
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引用次数: 70

摘要

大多数以前提出的频繁图挖掘算法都是为了找到所有频繁的闭子图的完整集合。然而,在许多情况下,只有具有特定拓扑结构的频繁子图的子集是特别感兴趣的。因此,挖掘所有频繁子图的完整集的方法不适合挖掘这些特殊兴趣的频繁子图,因为它在无兴趣的子图上浪费了相当大的计算能力和空间。本文提出了一种新的算法CLAN,用于挖掘图集中最连贯的结构——频繁闭合团。通过探索团模式的一些特性,我们可以简化规范标签的设计和相应的团(或子团)同构测试。提出了几种有效的剪枝方法对搜索空间进行剪枝,同时采用团簇闭合检查方案去除非闭合的团簇模式。我们的实证结果表明,对于传统的图挖掘算法无法处理的大型密集图数据库,CLAN是非常有效的。CLAN在从大型股票市场数据中挖掘高度相关股票中的应用进一步证明了我们方法的新颖性。
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CLAN: An Algorithm for Mining Closed Cliques from Large Dense Graph Databases
Most previously proposed frequent graph mining algorithms are intended to find the complete set of all frequent, closed subgraphs. However, in many cases only a subset of the frequent subgraphs with a certain topology is of special interest. Thus, the method of mining the complete set of all frequent subgraphs is not suitable for mining these frequent subgraphs of special interest as it wastes considerable computing power and space on uninteresting subgraphs. In this paper we develop a new algorithm, CLAN, to mine the frequent closed cliques, the most coherent structures in the graph setting. By exploring some properties of the clique pattern, we can simplify the canonical label design and the corresponding clique (or subclique) isomorphism testing. Several effective pruning methods are proposed to prune the search space, while the clique closure checking scheme is used to remove the non-closed clique patterns. Our empirical results show that CLAN is very efficient for large dense graph databases with which the traditional graph mining algorithms fail. The novelty of our method is further demonstrated by the application of CLAN in mining highly correlated stocks from large stock market data.
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