基于交集图和内容分析的复杂网络社区提取

Toshiya Kuramochi, Naoki Okada, Kyohei Tanikawa, Y. Hijikata, S. Nishida
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引用次数: 6

摘要

许多研究者研究了复杂的网络,如万维网、社会网络和蛋白质相互作用网络。他们发现了无标度特性、小世界效应、高聚类系数等特性。这个领域的一个热门话题是社区检测。例如,社区在WWW上展示了一组关于某个主题的网页。群落结构无疑是复杂网络的一个关键特征。本文提出了一种在复杂网络中寻找社区的新方法。我们提出的方法使用交集图的概念来考虑群落之间的重叠。此外,我们通过使用重叠程度和集之间内容信息的相似性对边缘进行加权来解决边缘同质性问题。最后,基于模块化进行聚类。然后,我们在一个真实的SNS网络上对我们的方法进行了验证。
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Community Extracting Using Intersection Graph and Content Analysis in Complex Network
Many researchers have studied complex networks such as the World Wide Web, social networks, and the protein interaction network. They have found scale-free characteristics, the small-world effect, the property of high-clustering coefficient, and so on. One hot topic in this area is community detection. For example, the community shows a set of web pages about a certain topic in the WWW. The community structure is unquestionably a key characteristic of complex networks. In this paper, we propose a new method for finding communities in complex networks. Our proposed method considers the overlaps between communities using the concept of the intersection graph. Additionally, we address the problem of edge in homogeneity by weighting edges using the degree of overlaps and the similarity of content information between sets. Finally, we conduct clustering based on modularity. And then, we evaluate our method on a real SNS network.
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