A novel criterion for overlapping communities detection and clustering improvement

A. Berti, A. Sperduti, Andrea Burattin
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引用次数: 2

Abstract

In community detection, the theme of correctly identifying overlapping nodes, i.e. nodes which belong to more than one community, is important as it is related to role detection and to the improvement of the quality of clustering: proper detection of overlapping nodes gives a better understanding of the community structure. In this paper, we introduce a novel measure, called cuttability, that we show being useful for reliable detection of overlaps among communities and for improving the quality of the clustering, measured via modularity. The proposed algorithm shows better behaviour than existing techniques on the considered datasets (IRC logs and Enron e-mail log). The best behaviour is caught when a network is split between micro-communities. In that case, the algorithm manages to get a better description of the community structure.
一种新的重叠群落检测和聚类改进准则
在社区检测中,正确识别重叠节点(即属于多个社区的节点)的主题很重要,因为它关系到角色检测和聚类质量的提高:正确检测重叠节点可以更好地理解社区结构。在本文中,我们引入了一种新的度量,称为可切割性,我们证明它对于可靠地检测群落之间的重叠和提高聚类的质量是有用的,通过模块化来测量。所提出的算法在考虑的数据集(IRC日志和安然电子邮件日志)上表现出比现有技术更好的行为。当一个网络被划分为微社区时,最好的行为就会被捕捉到。在这种情况下,算法能够更好地描述社区结构。
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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