gApprox: Mining Frequent Approximate Patterns from a Massive Network

Cheng Chen, Xifeng Yan, Feida Zhu, Jiawei Han
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引用次数: 95

Abstract

Recently, there arise a large number of graphs with massive sizes and complex structures in many new applications, such as biological networks, social networks, and the Web, demanding powerful data mining methods. Due to inherent noise or data diversity, it is crucial to address the issue of approximation, if one wants to mine patterns that are potentially interesting with tolerable variations. In this paper, we investigate the problem of mining frequent approximate patterns from a massive network and propose a method called gApprox. gApprox not only finds approximate network patterns, which is the key for many knowledge discovery applications on structural data, but also enriches the library of graph mining methodologies by introducing several novel techniques such as: (1) a complete and redundancy-free strategy to explore the new pattern space faced by gApprox; and (2) transform "frequent in an approximate sense" into an anti-monotonic constraint so that it can be pushed deep into the mining process. Systematic empirical studies on both real and synthetic data sets show that frequent approximate patterns mined from the worm protein-protein interaction network are biologically interesting and gApprox is both effective and efficient.
gApprox:从大规模网络中挖掘频繁的近似模式
近年来,在生物网络、社会网络和Web等新兴应用中出现了大量规模庞大、结构复杂的图,这就需要强大的数据挖掘方法。由于固有的噪声或数据多样性,如果想要挖掘具有可容忍变化的潜在有趣模式,那么解决近似问题至关重要。本文研究了从大规模网络中挖掘频繁近似模式的问题,并提出了一种称为gApprox的方法。gApprox不仅可以发现近似的网络模式,这是许多结构数据知识发现应用的关键,而且还通过引入一些新技术丰富了图挖掘方法库,例如:(1)gApprox所面临的新模式空间的完整和无冗余策略;(2)将“近似意义上的频繁”转化为反单调约束,使其能够深入到挖掘过程中。对真实数据集和合成数据集的系统实证研究表明,从蠕虫蛋白质-蛋白质相互作用网络中挖掘的频繁近似模式具有生物学意义,并且gApprox既有效又高效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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