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Identifying Proficient Cybercriminals Through Text and Network Analysis

机译:通过文本和网络分析识别熟练的网络犯罪分子

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A few highly skilled cybercriminals run the Crime as a Service business model. These expert hackers provide entry-level criminals with tools that allow them to enhance their cybercrime operations significantly. Thus, effectively and efficiently disrupting highly proficient cybercriminals is of a high priority to law enforcement. Such individuals can be found in vast underground forums, though it is particularly challenging to identify and profile individual users. We tackle this problem by combining two analysis methods: text analysis with Latent Dirichlet Allocation (LDA) and Social Network Analysis with centrality measures. In this paper, we use LDA to eliminate around 79% of hacker forum users with very low to no technical skills, while also inferring the forum roles held by the remaining users. Furthermore, we use centrality measures to identify users with hugely popular public posts, including users with very few public posts who receive much attention from their peers. We study various preprocessing methods, wherein we achieve our results by following a series of rigorous preprocessing steps. Our proposed method works towards overcoming current challenges in identifying and interrupting highly proficient cybercriminals.
机译:一些高技能的网络犯罪分子作为服务商业模式运行犯罪。这些专家黑客提供了具有工具的入门级罪犯,使他们能够显着提高网络犯罪行动。因此,有效且有效地破坏了高度熟练的网络犯罪分子是执法的高度优先。这些人可以在广阔的地下论坛中找到,尽管识别和配置个人用户尤其具有挑战性。我们通过组合两个分析方法来解决这个问题:用潜在的Dirichlet分配(LDA)和具有中心度量的社交网络分析的文本分析。在本文中,我们使用LDA来消除大约79%的黑客论坛用户,非常低于无技术技能,同时也推断出剩余用户持有的论坛角色。此外,我们使用集中度措施来识别具有大量热门公共职位的用户,包括具有极少公开员额的用户从同龄人那里获得了很多的关注。我们研究了各种预处理方法,其中通过遵循一系列严格的预处理步骤来实现我们的结果。我们所提出的方法旨在克服当前挑战识别和中断高度熟练的网络犯罪分子。

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