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

Maximilian Viermetz, Michal Skubacz
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引用次数: 10

Abstract

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.
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利用主题发现对社交网络分析中的大型通信图进行分割
近年来,将社交网络分析应用于万维网和互联网上的图表受到越来越多的关注。各种各样的网络,如由电子邮件通信、即时消息、互联网中的链接结构以及引用和协作网络产生的网络,都用这种方法进行了处理。到目前为止,这些分析仅使用图结构。然而,在消息传递语料库中还有另一个可用的信息源,即内容。我们建议将内容分析领域应用到社会网络分析的过程中。通过从海量图中提取相关且内聚的子网络,我们获得了比以前更可靠的子网络中包含的行动者的信息。
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