用时间相干性分析识别暗网集群

Christopher C. Yang, Xuning Tang, Xiajing Gong
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引用次数: 13

摘要

极端分子积极利用社交媒体宣传自己的意识形态。网络论坛是吸引全球互联网用户关注及时问题的理想平台,这些讨论中的一些观点可能会威胁到公共安全。对于情报部门来说,确定这些论坛上的集群并捕捉讨论的主题及其发展是非常有兴趣的。以前在聚类识别方面的工作主要集中在使用链接分析技术的用户之间直接交互构建的社交网络上。然而,用户之间的直接交互可能只捕获论坛用户之间的一种潜在关系。有共同兴趣的用户不一定会直接互动。另一方面,他们可能同时活跃在类似的事件中。在本文中,我们提出了一种时间相干分析方法来从暗网数据中识别用户集群。将用户表示为活跃度向量,并在时间相干分析的支持下提取聚类。我们在合成数据集和真实数据集上测试了我们提出的方法。使用真实的暗网数据集,确定了三个集群,每个集群也与一个特定的主题相关联。它表明,不需要使用任何内容分析,只需使用时间分析就可以发现参与讨论主题的用户群。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Dark Web clusters with temporal coherence analysis
Extremists are actively utilizing social media as propaganda to promote their ideologies. Online forums are ideal platforms to draw attention from worldwide Internet users to the timely issues and some opinions in these discussions can be threatening the public safety. It is of great interest for the intelligence to identify clusters on these forums and capture the topics of discussions and their development. Previous work in cluster identification focused on social networks constructed by the direct interactions between users utilizing link analysis techniques. However, the direct interactions between users may only capture one potential relationship between forum users. Users who share common interests may not necessarily interact with each other directly. On the other hand, they may be active in similar events simultaneously. In this paper, we propose a temporal coherence analysis approach to identify clusters of users from the Dark Web data. Users are represented as vectors of activeness and clusters are extracted with the support of temporal coherence analysis. We tested our proposed methods on both synthetic dataset and real world dataset. Using the real-world Dark Web dataset, three clusters were identified and each cluster was also associated with a specific theme. It shows that a cluster of users participating in a theme of discussion can be discovered without using any content analysis but only using temporal analysis.
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