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Using Topic Discovery to Segment Large Communication Graphs for Social Network Analysis

机译:使用主题发现对大型交流图进行细分以进行社交网络分析

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The application of social network analysis to graphs found in the World Wide Web and the Internet has received increasing attention in recent years. Networks as diverse as those generated by e-mail communication, instant messaging, link structure in the Internet as well as citation and collaboration networks have all been treated with this method. So far these analyses solely utilize graph structure. There is, however, another source of information available in messaging corpora, namely content. We propose to apply the field of content analysis to the process of social network analysis. By extracting relevant and cohesive sub-networks from massive graphs, we obtain information on the actors contained in such sub-networks to a much firmer degree than before.
机译:近年来,将社交网络分析应用于在万维网和Internet中找到的图形越来越受到关注。通过电子邮件通信,即时消息传递,Internet中的链接结构以及引文和协作网络生成的各种网络都已使用此方法进行了处理。到目前为止,这些分析仅利用图结构。但是,在消息传递语料库中还有另一种可用的信息源,即内容。我们建议将内容分析领域应用到社交网络分析过程中。通过从大量图形中提取相关的和有凝聚力的子网络,我们可以比以前更加牢固地获得有关这些子网络中包含的参与者的信息。

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