eDarkFind:用于Sybil账户检测的无监督多视图学习

Ramnath Kumar, S. Yadav, Raminta Daniulaityte, Francois R. Lamy, K. Thirunarayan, Usha Lokala, A. Sheth
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引用次数: 19

摘要

暗网加密市场是使用加密货币(如比特币、门罗币)和先进加密技术的在线市场,为交易非法商品或服务的供应商和消费者提供匿名性。通过这些加密市场宣传和销售的物质的确切数量很难评估,至少部分很难评估,因为供应商倾向于在不同的加密市场内部和跨市场维护多个账户(或Sybil账户)。将这些不同的账户联系起来,将使我们能够准确地评估每个供应商在不同加密市场上宣传的物质的数量。在本文中,我们提出了一个多视图无监督框架(eDarkFind),它有助于建模供应商特征并促进Sybil帐户检测。我们采用多视图学习范式,通过利用来自多个丰富来源的不同视图(如BERT、风格测量学和位置表示)来概括和提高性能。我们的模型进一步定制,以利用特定领域的知识,如药物滥用本体,以考虑物质信息。我们进行了大量的实验,并证明了从不同来源获得的多个视图可以有效地链接Sybil帐户。我们提出的eDarkFind模型在三个真实数据集上实现了98%的准确率,这表明了该方法的通用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
eDarkFind: Unsupervised Multi-view Learning for Sybil Account Detection
Darknet crypto markets are online marketplaces using crypto currencies (e.g., Bitcoin, Monero) and advanced encryption techniques to offer anonymity to vendors and consumers trading for illegal goods or services. The exact volume of substances advertised and sold through these crypto markets is difficult to assess, at least partially, because vendors tend to maintain multiple accounts (or Sybil accounts) within and across different crypto markets. Linking these different accounts will allow us to accurately evaluate the volume of substances advertised across the different crypto markets by each vendor. In this paper, we present a multi-view unsupervised framework (eDarkFind) that helps modeling vendor characteristics and facilitates Sybil account detection. We employ a multi-view learning paradigm to generalize and improve the performance by exploiting the diverse views from multiple rich sources such as BERT, stylometric, and location representation. Our model is further tailored to take advantage of domain-specific knowledge such as the Drug Abuse Ontology to take into consideration the substance information. We performed extensive experiments and demonstrated that the multiple views obtained from diverse sources can be effective in linking Sybil accounts. Our proposed eDarkFind model achieves an accuracy of 98% on three real-world datasets which shows the generality of the approach.
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