Hierarchical Clustering Based on Hyper-edge Similarity for Community Detection

Qing Cheng, Zhong Liu, Jincai Huang, Cheng Zhu, Yanjun Liu
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引用次数: 8

Abstract

Community structure is very important for many real-world networks. It has been shown that communities are overlapping and hierarchical. However, most previous methods, based on the graph model, can't investigate these two properties of community structure simultaneously. Moreover, in some cases the use of simple graphs does not provide a complete description of the real-world network. After introducing hyper graphs to describe real-world networks and defining hyper-edge similarity measurement, we propose a Hierarchical Clustering method based on Hyper-edge Similarity (HCHS) to simultaneously detect both the overlapping and hierarchical properties of complex community structure, as well as using the newly introduced community density to evaluate the goodness of a community. The examples of application to real-world networks give excellent results.
基于超边缘相似度的分层聚类社区检测
社区结构对于许多现实世界的网络来说是非常重要的。研究表明,社区是重叠的、分层的。然而,以往大多数基于图模型的方法无法同时研究群落结构的这两种性质。此外,在某些情况下,简单图的使用并不能提供对真实网络的完整描述。在引入超图来描述现实网络并定义超边缘相似度度量之后,我们提出了一种基于超边缘相似度(HCHS)的分层聚类方法来同时检测复杂社区结构的重叠性和层级性,并使用新引入的社区密度来评估社区的优劣。应用于实际网络的例子给出了很好的结果。
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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