Arc-Community Detection via Triangular Random Walks

P. Boldi, M. Rosa
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引用次数: 10

Abstract

Community detection in social networks is a topic of central importance in modern graph mining, and the existence of overlapping communities has recently given rise to new interest in arc clustering. In this paper, we propose the notion of triangular random walk as a way to unveil arc-community structure in social graphs: a triangular walk is a random process that insists differently on arcs that close a triangle. We prove that triangular walks can be used effectively, by translating them into a standard weighted random walk on the line graph, our experiments show that the weights so defined are in fact very helpful in determining the similarity between arcs and yield high-quality clustering. Even if our technique gives a weighting scheme on the line graph and can be combined with any node-clustering method in the final phase, to make our approach more scalable we also propose an algorithm (ALP) that produces the clustering directly without the need to build the weighted line graph explicitly. Our experiments show that ALP, besides providing the largest accuracy, it is also the fastest and most scalable among all arc-clustering algorithms we are aware of.
通过三角形随机漫步的弧社区检测
社交网络中的社区检测是现代图挖掘中的一个重要主题,而重叠社区的存在最近引起了人们对弧聚类的新兴趣。在本文中,我们提出了三角形随机漫步的概念,作为揭示社交图中弧社区结构的一种方式:三角形漫步是一个随机过程,它以不同的方式坚持闭合三角形的弧。通过将三角漫步转换为线形图上的标准加权随机漫步,我们证明了三角漫步可以有效地使用,我们的实验表明,如此定义的权重实际上非常有助于确定弧之间的相似性并产生高质量的聚类。即使我们的技术给出了线形图上的加权方案,并且可以在最后阶段与任何节点聚类方法相结合,为了使我们的方法更具可扩展性,我们还提出了一种算法(ALP),该算法直接产生聚类,而无需显式地构建加权线形图。我们的实验表明,ALP除了提供最大的精度之外,也是我们所知道的所有弧形聚类算法中最快和最具可扩展性的算法。
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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