分散网络中的私有数据聚合

P. K. Setia, Gamze Tillem, Z. Erkin
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引用次数: 2

摘要

由于依赖于用户数据的在线服务越来越多,保护隐私的数据聚合越来越受欢迎。此信息是隐私敏感信息,因此需要在数据处理期间进行保护。在处理过程中考虑了各种各样的方法来实现隐私。示例包括差分隐私、屏蔽、加密技术(例如,使用同态加密,使数据能够在加密下处理)。在最近的工作中,已经提出了几种采用后一种隐私保护技术的方法,这些方法在敏感数据保护方面被证明是安全的。然而,研究主要集中在效率上,而不是选择网络拓扑。与现有的工作相反,我们考虑了一个分散的网络,在这个网络中,数据可以在没有中央机构(如聚合器)存在的情况下聚合。我们分别提出了两个基于同态加密和秘密共享的新协议。我们的分析证实了我们关于高效率、可伸缩性和安全性的主张。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Private Data Aggregation in Decentralized Networks
Privacy-preserving data aggregation is growing in popularity due to the increasing amount of online services depending on user data. This information is privacy-sensitive, warranting the need for protection during data-processing. A wide variety of approaches have been considered to achieve privacy during the processing. Examples include differential privacy, masking, cryptographic techniques (e.g. using homomorphic encryption which enables data processing under encryption). In recent works, several approaches employing the latter privacy-preserving technique has been proposed that is proven to be secure in terms of sensitive data protection. However, the research mainly focuses mostly on efficiency rather than on the selected network topology. In contrast to existing work, we consider a decentralized network, where data can be aggregated without the presence of a central authority, such as an aggregator. We propose two novel protocols based on homomorphic encryption and secret sharing, respectively. Our analyses confirm our claims regarding high efficiency, scalability, and security.
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