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Extracting Social Structure from DarkWeb Forums

机译:从Darkweb论坛中提取社会结构

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摘要

This paper explores various Social Network Analysis (SNA) techniques in order to identify a range of potentially 'important' members of Islamic Networks within Dark Web Forums. For this experiment, we conducted our investigation on five forums collected in previous work as part of the DarkWeb Forum portal and built upon the tool support created in our previous research in order to visualise and analyse the network. Whilst existing work attempts to identify these structures through state-of-the-art Computational Linguistic techniques, our work relies on the communication metadata alone. Our analysis involved first calculating a range of SNA metrics to better understand the group members, and then apply unsupervised learning in order to create clusters that would help classify the Dark Web Forums users into hierarchical clusters. In order to create our social networks, we investigated the effect of repeated author resolution and various weighting schemes on the ranking of forum members by creating four social networks per forum and evaluating the correlation of the top n users (for n = 10; 20; 30; 40; 50 and 100). Our results identified that varying the weighting schemes created more consistent ranking schemes than varying the repeated author resolution.
机译:本文探讨了各种社交网络分析(SNA)技术,以确定暗网络论坛中伊斯兰网络的一系列潜在“重要”成员。对于此实验,我们对以前工作中收集的五个论坛进行了调查,作为DarkWeb Forum Portal的一部分,并建立在我们以前的研究中创建的工具支持下,以便可视化和分析网络。虽然现有的工作试图通过最先进的计算语言技术识别这些结构,但我们的工作依赖于单独的通信元数据。我们的分析涉及首先计算一系列SNA指标以更好地了解组成员,然后应用无监督的学习,以创建有助于将黑暗Web论坛用户分类为分层集群的集群。为了创建我们的社交网络,我们通过创建每次论坛的四个社交网络并评估顶部n个用户的相关性(对于n = 10; 20; 30; 40; 50和100)。我们的结果确定,改变加权方案创造了比改变重复的作者解决方案更加一致的排名方案。

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