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An information theoretic framework for active de-anonymization in social networks based on group memberships

机译:基于组成员身份的社交网络中主动去匿名化的信息理论框架

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In this paper, a new mathematical formulation for the problem of de-anonymizing social network users by actively querying their membership in social network groups is introduced. In this formulation, the attacker has access to a noisy observation of the group membership of each user in the social network. When an unidentified victim visits a malicious website, the attacker uses browser history sniffing to make queries regarding the victim's social media activity. Particularly, it can make polar queries regarding the victim's group memberships and the victim's identity. The attacker receives noisy responses to her queries. The goal is to de-anonymize the victim with the minimum number of queries. Starting with a rigorous mathematical model for this active de-anonymization problem, an upper bound on the attacker's expected query cost is derived, and new attack algorithms are proposed which achieve this bound. These algorithms vary in computational cost and performance. The results suggest that prior heuristic approaches to this problem provide sub-optimal solutions.
机译:本文介绍了一种新的数学公式,用于通过主动查询社交网络用户在社交网络组中的成员身份来使社交网络用户匿名的问题。在这种表述中,攻击者可以访问社交网络中每个用户的组成员身份的嘈杂观察。当身份不明的受害者访问恶意网站时,攻击者使用嗅探器的浏览器历史记录来查询有关受害者社交媒体活动的信息。特别是,它可以对受害人的团体成员身份和受害人的身份进行两极查询。攻击者收到对其查询的嘈杂响应。目的是用最少的查询数使受害者匿名。从针对该主动去匿名化问题的严格数学模型开始,得出攻击者预期查询成本的上限,并提出了实现此界限的新攻击算法。这些算法的计算成本和性能各不相同。结果表明,针对该问题的现有启发式方法提供了次优的解决方案。

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