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Topic-Based Social Network Analysis for Virtual Communities of Interests in the Dark Web

机译:基于主题的虚拟网络虚拟社区的社交网络分析

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The study of extremist groups and their interaction is a crucial task in order to maintain homeland security and peace. Tools such as social networks analysis and text mining have contributed to the understanding of this kind of groups in order to develop counter-terrorism applications. This work addresses the topic-based community key members extraction problem, for which our method combines both text mining and social network analysis techniques. This is achieved by first applying latent Dirichlet allocation to build two topic-based social networks: one social network oriented towards the thread creator point-of-view, and the other one oriented towards the repliers of the overall forum. Then, by using different Social Network Analysis measures, topic-based key members are evaluated using as benchmark a social network built using the plain documents. Experiments were performed using an English language based forum available in the Dark Web portal.
机译:重点群体的研究及其互动是一个至关重要的任务,以维持国土安全和和平。社交网络分析和文本挖掘等工具有助于了解这种群体,以制定反恐应用。这项工作解决了基于主题的社区关键成员提取问题,我们的方法结合了文本挖掘和社交网络分析技术。这是通过首先应用潜在的Dirichlet分配来构建两个基于主题的社交网络的信息:一个社交网络,以线程创建者为导向,另一个面向整个论坛的复制者。然后,通过使用不同的社交网络分析措施,基于基于主题的关键成员使用使用普通文档构建的基准来评估基准。使用黑色Web门户中可用的英语语言论坛进行实验。

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