Jianwei Qian, Shaojie Tang, Huiqi Liu, Taeho Jung, Xiangyang Li
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引用次数: 5
Abstract
The rapid information propagation facilitates our work and life without precedent in history, but it has tremendously exaggerated the risk and consequences of privacy invasion. Today's attackers are becoming more and more powerful in gathering personal information from many sources and mining these data to further uncover users' privacy. A great number of previous works have shown that, with adequate background knowledge, attackers are even able to infer sensitive information that is not revealed to anyone malicious before. In this paper, we model the attacker's knowledge using a knowledge graph and formally define the privacy inference problem. We show its #P-hardness and design an approximation algorithm to perform privacy inference in an iterative fashion, which also reflects real-life network evolution. The simulations on two data sets demonstrate the feasibility and efficacy of privacy inference using knowledge graphs.
信息的快速传播给我们的工作和生活带来了前所未有的便利,但也极大地夸大了隐私被侵犯的风险和后果。今天的攻击者越来越强大,他们可以从许多来源收集个人信息,并对这些数据进行挖掘,以进一步揭示用户的隐私。以前的大量研究表明,只要有足够的背景知识,攻击者甚至可以推断出以前没有向任何恶意者透露的敏感信息。本文利用知识图对攻击者的知识进行建模,并形式化地定义了隐私推理问题。我们展示了它的# p -硬度,并设计了一个近似算法,以迭代的方式执行隐私推断,这也反映了现实生活中的网络演变。在两个数据集上的仿真验证了利用知识图进行隐私推理的可行性和有效性。