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Studying Community Dynamics with an Incremental Graph Mining Algorithm

机译:用增量图挖掘算法研究社区动态

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The widespread usage of the Web and later of the Web 2.0 for social interactions has stimulated scholars of different disciplines in studying electronic communities. Traditionally, communities are observed as a static phenomenon. However, they are evolving constellations, which emerge, lose members and obtain new ones and potentially, grow, coerce, split or decline. Such dynamic phenomena require the study of social networks across the time axis.We propose the graph mining algorithm DENGRAPH for the discovery and monitoring of evolving communities. Data mining methods are successfully used for community discovery but are mostly limited to the static perspective. Taking a dynamic perspective implies the study of a stream of interactions among community members. Accordingly, our DENGRAPH is an incremental graph mining algorithm, which detects and adapts communities over time. We report on our first results in applying DENGRAPH on the social network of mail interactions of ENRON.
机译:Web和后来的Web 2.0在社交互动中的广泛使用激发了研究电子社区的不同学科的学者。传统上,将社区视为静态现象。但是,它们是不断发展的星座,出现,失去成员并获得新成员,并有可能增长,胁迫,分裂或衰落。这种动态现象需要研究时间轴上的社交网络。 我们提出了图挖掘算法DENGRAPH用于发现和监视不断发展的社区。数据挖掘方法已成功用于社区发现,但主要限于静态视角。采取动态的观点意味着要研究社区成员之间的互动流。因此,我们的DENGRAPH是一种增量图挖掘算法,可以随着时间的推移检测并适应社区。我们报告了将DENGRAPH应用到ENRON邮件交互的社交网络上的第一个结果。

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