通过预测受害者来阻止虚假的OSN账户

Yazan Boshmaf, M. Ripeanu, K. Beznosov, E. Santos-Neto
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引用次数: 21

摘要

打击在线社交网络中自动虚假账户的传统防御机制是与受害者无关的。尽管虚假账户的受害者在后续攻击的可行性中发挥了重要作用,但目前还没有利用这种洞察力来改善现状的工作。在本立场文件中,我们迈出了第一步,并建议将对未知虚假受害者的预测纳入现有防御机制的工作流程。特别是,我们调查了这样的集成如何导致更强大的虚假账户防御机制。我们还使用来自Facebook和Tuenti的真实数据集来评估使用监督机器学习预测虚假账户受害者的可行性。
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Thwarting Fake OSN Accounts by Predicting their Victims
Traditional defense mechanisms for fighting against automated fake accounts in online social networks are victim-agnostic. Even though victims of fake accounts play an important role in the viability of subsequent attacks, there is no work on utilizing this insight to improve the status quo. In this position paper, we take the first step and propose to incorporate predictions about victims of unknown fakes into the workflows of existing defense mechanisms. In particular, we investigated how such an integration could lead to more robust fake account defense mechanisms. We also used real-world datasets from Facebook and Tuenti to evaluate the feasibility of predicting victims of fake accounts using supervised machine learning.
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