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Key Player Identification in Terrorism-Related Social Media Networks Using Centrality Measures

机译:使用集中度度量的恐怖主义相关社交媒体网络中的关键参与者标识

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Monitoring terrorist groups and their suspicious activities in social media is a challenging task, given the large amounts of data involved and the need to identify the most influential users in a smart way. To this end, many efforts have focused on using centrality measures for the identification of the key players in terrorism-related social media networks, so that their suspension/removal leads to severe disruption in the connectivity of the network. This work proposes a novel centrality measure, Mapping Entropy Betweenness (MEB), and assesses its effectiveness for key player identification on a dataset of terrorism-related Twitter user accounts by simulating targeted attacks that remove the most central nodes of the network. The results indicate that the MEB affects the robustness of this terrorist network more than well-established centrality measures.
机译:鉴于涉及的大量数据以及需要以聪明的方式识别最有影响力的用户,监视社交媒体中的恐怖组织及其可疑活动是一项艰巨的任务。为此,许多努力都集中在使用集中性措施来识别与恐怖主义有关的社交媒体网络中的关键参与者,以使他们的暂停/移走会严重破坏网络的连接。这项工作提出了一种新颖的集中度度量,即“映射熵之间的映射(MEB)”,并通过模拟删除了网络中最中心节点的针对性攻击,评估了其在与恐怖主义相关的Twitter用户帐户数据集上对关键参与者识别的有效性。结果表明,MEB对这种恐怖网络的健壮性的影响远超过已建立的集中度措施。

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