An efficient distributed privacy-preserving recommendation system

Frederik Armknecht, T. Strufe
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引用次数: 27

Abstract

Implementing a recommendation system on the data of mobile social networks exploits knowledge about behavior and preferences of its users and hence raises serious privacy concerns. Leveraging the wealth of aggregated information in these services promises an immense benefit by allowing suggestions for presumably appreciated, yet previously unseen restaurants, sights, and further types of locations. Privacy preserving recommenders based on homomorphic encryption have been proposed, which have a systematic draw-back: while recommender systems often store their information as real values, all homomorphic encryption schemes used today process only data from other algebraic structures, e.g., the ring of integers modulo some integer n. Therefore, we present a novel distributed recommender and a homomorphic encryption scheme, which works directly on real numbers and which possesses some remarkable properties: it is conceptually simple, efficient, and provably secure.
一个高效的分布式隐私保护推荐系统
基于移动社交网络数据的推荐系统利用了用户行为和偏好的知识,因此引发了严重的隐私问题。利用这些服务中丰富的聚合信息,可以为可能受到赞赏但以前未见过的餐馆、景点和其他类型的位置提供建议,从而带来巨大的好处。提出了基于同态加密的隐私保护推荐,但存在系统性缺陷:虽然推荐系统通常将其信息存储为实数,但目前使用的所有同态加密方案都只处理来自其他代数结构的数据,例如整数模取整数n的环。因此,我们提出了一种新的分布式推荐和同态加密方案,它直接作用于实数,并且具有一些显著的特性:概念简单,高效,并且可证明安全。
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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