e-PPI: Locator Service in Information Networks with Personalized Privacy Preservation

Y. Tang, Ling Liu, A. Iyengar, Kisung Lee, Qi Zhang
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引用次数: 21

Abstract

In emerging information networks, having a privacy preserving index (or PPI) is critically important for locating information of interest for data sharing across autonomous providers while preserving privacy. An understudied problem for PPI techniques is how to provide controllable privacy preservation, given the innate difference of privacy concerns regarding different data owners. In this paper we present a personalized privacy preserving index, coined ε-PPI, which guarantees quantitative privacy preservation differentiated by personal identities. We devise a new common-identity attack that breaks existing PPI's and propose an identity-mixing protocol against the attack in ε-PPI. The proposed ε-PPI construction protocol is the first without any trusted third party and/or trust relationships between providers. We have implemented our ε-PPI construction protocol by using generic MPC techniques (secure multi-party computation) and optimized the performance to a practical level by minimizing the expensive MPC part.
e-PPI:具有个性化隐私保护的信息网络定位服务
在新兴的信息网络中,拥有隐私保护索引(PPI)对于在保护隐私的同时定位自治提供者之间数据共享感兴趣的信息至关重要。考虑到不同数据所有者对隐私关注的固有差异,PPI技术的一个未充分研究的问题是如何提供可控的隐私保护。本文提出了一种个性化的隐私保护指数ε-PPI,它保证了按个人身份区分的定量隐私保护。我们设计了一种新的共同身份攻击,打破了现有的PPI,并提出了一种针对ε-PPI攻击的身份混合协议。提出的ε-PPI构建协议是第一个不存在任何可信第三方和/或提供商之间信任关系的协议。我们使用通用的MPC技术(安全多方计算)实现了ε-PPI构建协议,并通过最小化昂贵的MPC部分将性能优化到实用水平。
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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