On Modularity of Social Network Communities: The Spectral Characterization

Bo Yang, Jiming Liu, Jianfeng Feng, Da-you Liu
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引用次数: 9

Abstract

The term of social network communities refers to groups of individuals within which social interactions are intense and between which they are weak. A social network community mining problem (SNCMP) can be stated as the problem of finding all such communities from a given social network. A wide variety of applications can be formulated into SNCMPs, ranging from Web intelligence to social intelligence. So far, many algorithms addressing the SNCMP have been developed; most of them are either optimization or heuristic based methods. Different from all existing work, this paper explores the notion of a social network community and its intrinsic properties, drawing on the dynamics of a stochastic model naturally introduced. In particular, it uncovers an interesting connection between the hierarchical community structure of a network and the metastability of a Markov process constructed upon it. A lot of critical topological information regarding to communities hidden in networks can be inferred from the derived spectral signatures of such networks, without actually clustering them with any particular algorithms. Based upon the above connection, we can obtain a framework for characterizing and analyzing social network communities.
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社会网络社区的模块化:光谱表征
社会网络社区是指社会互动强烈、社会互动弱的个体群体。社交网络社区挖掘问题(SNCMP)可以被描述为从给定的社交网络中找到所有这样的社区的问题。从Web智能到社会智能,各种各样的应用都可以形成sncmp。到目前为止,已经开发了许多处理snmp的算法;其中大多数是基于优化或启发式的方法。与所有现有的工作不同,本文探讨了社会网络社区的概念及其内在属性,借鉴了自然引入的随机模型的动力学。特别是,它揭示了网络的层次社区结构与在其上构建的马尔可夫过程的亚稳态之间的有趣联系。许多关于隐藏在网络中的社区的关键拓扑信息可以从这些网络的派生谱特征中推断出来,而无需使用任何特定的算法对它们进行实际聚类。基于上述联系,我们可以得到一个表征和分析社交网络社区的框架。
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