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Who are in the Darknet? Measurement and Analysis of Darknet Person Attributes

机译:谁在暗网中?暗网人物属性的测量与分析

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The high anonymity of Darknet makes it attractive to users who want to avoid Internet censorship and surveillance. As a result, in recent years, Darknet is abused for various illegal purposes. Undoubtedly, measurement and analysis towards the attributes of people in the Darknet can obtain a comprehensive characterization of dangerous users and help trace malicious users, reducing cybercrimes. However, it is still challenging to extract person attributes in Darknet scenario due to its anonymity and content sparsity. Therefore, in this paper, we propose a new person attribute extraction method consisting of three steps: block filtration, attribute candidate generation and attribute candidate verification. Experiments show that our extraction method performs better than traditional extraction methods. Using the extracted information as input, we measure and analyze the number of attributes, Top-K name entities, email domain name, etc. of people in Darknet, revealing the characteristics of the person attributes in the dark web pages.
机译:Darknet的高度匿名性使其对于希望避免Internet审查和监视的用户具有吸引力。结果,近年来,Darknet被滥用于各种非法目的。毫无疑问,对暗网中人员属性的测量和分析可以全面了解危险用户的特征,并有助于追踪恶意用户,从而减少网络犯罪。但是,由于其匿名性和内容稀疏性,在Darknet场景中提取人员属性仍然具有挑战性。因此,本文提出了一种新的人员属性提取方法,该方法包括三个步骤:块过滤,属性候选生成和属性候选验证。实验表明,我们的提取方法比传统提取方法具有更好的性能。使用提取的信息作为输入,我们测量并分析Darknet中人员的属性数量,Top-K名称实体,电子邮件域名等,从而揭示了深色网页中人员属性的特征。

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