Personalized privacy preservation

Yufei Tao, Xiaokui Xiao
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引用次数: 724

Abstract

We study generalization for preserving privacy in publication of sensitive data. The existing methods focus on a universal approach that exerts the same amount of preservation for all persons, with-out catering for their concrete needs. The consequence is that we may be offering insufficient protection to a subset of people, while applying excessive privacy control to another subset. Motivated by this, we present a new generalization framework based on the concept of personalized anonymity. Our technique performs the minimum generalization for satisfying everybody's requirements, and thus, retains the largest amount of information from the microdata. We carry out a careful theoretical study that leads to valuable insight into the behavior of alternative solutions. In particular, our analysis mathematically reveals the circumstances where the previous work fails to protect privacy, and establishes the superiority of the proposed solutions. The theoretical findings are verified with extensive experiments.
个性化隐私保护
研究了敏感数据发布中保护隐私的泛化方法。现有的方法侧重于一种普遍的方法,即对所有人施加相同数量的保护,而不考虑他们的具体需要。其后果是,我们可能对一部分人提供的保护不足,而对另一部分人施加了过度的隐私控制。基于此,我们提出了一个基于个性化匿名概念的泛化框架。我们的技术以最小的泛化来满足每个人的需求,从而从微数据中保留了最大量的信息。我们进行了仔细的理论研究,从而对替代解决方案的行为产生了有价值的见解。特别是,我们的分析在数学上揭示了以前的工作未能保护隐私的情况,并确立了所提出的解决方案的优越性。通过大量的实验验证了理论结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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