A Note on Detection of Communities in Social Networks

P. Sridevi
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引用次数: 1

Abstract

 The modern Science of Social Networks has brought significant advances to our understanding of the Structure, dynamics and evolution of the Network. One of the important features of graphs representing the Social Networks is community structure. The communities can be considered as fairly independent components of the social graph that helps identify groups of users with similar interests, locations, friends, or occupations. The community structure is closely tied to triangles and their count forms the basis of community detection algorithms. The present work takes into consideration, a triangle instead of the edge as the basic indicator of a strong relation in the social graph. A simple triangle counting algorithm is then used to evaluate different metrics that are employed to detect strong communities. The methodology is applied to Zachary Social network and discussed. The results bring out the usefulness of counting triangles in a network to detect strong communities in a Social Network.  
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关于社会网络中社区检测的说明
现代社会网络科学为我们对网络结构、动态和演化的理解带来了重大进展。表示社交网络的图形的一个重要特征是社区结构。这些社区可以看作是社交图谱中相当独立的组成部分,可以帮助识别具有相似兴趣、位置、朋友或职业的用户群体。社区结构与三角形密切相关,它们的计数构成了社区检测算法的基础。本研究考虑用三角形代替边缘作为社会图谱中强关系的基本指标。然后使用一个简单的三角形计数算法来评估用于检测强大社区的不同指标。将该方法应用于Zachary社交网络并进行了讨论。研究结果表明,对网络中的三角形进行计数对于检测社交网络中的强社区是有用的。
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