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Structural and regular equivalence of community detection in social networks

机译:社交网络中社区检测的结构和常规对等

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The modern science of networks has brought significant advances to our understanding of complex systems. One of the most relative features of graphs representing in real systems is community detection. The community detection can be considered as fairly independent compartments of a graph and a similar role play. It is an important problem in the analysis of computer networks, social networks, biological networks and many other natural and artificial networks. Thus, these networks are in general very large. And the finding hidden structures and functional modules are very hard tasks. This problem is very hard and not yet satisfactorily solved. Many methods have been intended to deal with this problem in networks. Some of the most expectation are methods based on statistical inference, which support on solid mathematical foundations and return excellent results in practice. In this paper we show the blockmodeling, a collection of methods for partitioning networks according to well-specified criteria. We use the term “blockmodeling” to characterize the usual approach to blockmodeling, which based on the concepts of structural equivalence and regular equivalence. We also gives the idea about how community is detected in social networking by Euclidean distance algorithm and REGE algorithm.
机译:网络的现代科学为我们对复杂系统的理解带来了重大进步。在实际系统中表示的图的最相关特征之一是社区检测。可以将社区检测视为图表的相当独立的部分,并扮演类似的角色。在分析计算机网络,社交网络,生物网络以及许多其他自然和人工网络时,这是一个重要问题。因此,这些网络通常非常大。寻找隐藏的结构和功能模块是非常艰巨的任务。这个问题很难解决。已经打算使用许多方法来解决网络中的这个问题。最令人期待的是基于统计推断的方法,这些方法支持扎实的数学基础并在实践中返回出色的结果。在本文中,我们展示了块建模,这是根据明确指定的标准对网络进行分区的方法的集合。我们使用术语“块建模”来描述通常的块建模方法,该方法基于结构对等和规则对等的概念。我们还给出了关于如何通过欧氏距离算法和REGE算法在社交网络中检测社区的想法。

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