增强社会网络中基于熵的社区检测

J. Cruz, Cécile Bothorel, F. Poulet
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引用次数: 70

摘要

社会网络分析是近年来的一个重要课题,也给计算机科学领域带来了一些挑战。社交网络分析的一个方面是社区检测问题,这可以看作是一个图聚类问题。然而,社交网络不仅仅是一个图表,它们从社交方面获得了大量有趣的信息,比如个人资料信息、内容共享和注释等。大多数社区检测算法只使用网络的结构,即图。本文提出了一种利用语义信息和网络结构进行社区检测的新方法。因此,我们的方法结合了优化模块化的算法和基于熵的数据聚类算法,该算法试图找到具有低熵的分区并记住模块化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entropy based community detection in augmented social networks
Social network analysis has become a major subject in recent times, bringing also several challenges in the computer science field. One aspect of the social network analysis is the community detection problem, which can be seen as a graph clustering problem. However, social networks are more than a graph, they have an interesting amount of information derived from its social aspect, such as profile information, content sharing and annotations, among others. Most of the community detection algorithms use only the structure of the network, i.e., the graph. In this paper we propose a new method which uses the semantic information along with the network structure in the community detection process. Thus, our method combines an algorithm for optimizing modularity and an entropy-based data clustering algorithm, which tries to find a partition with low entropy and keeping in mind the modularity.
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