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Privacy-Preserving Collaborative Recommender Systems

机译:隐私保护协作推荐系统

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摘要

Collaborative recommender systems use various types of information to help customers find products of personalized interest. To increase the usefulness of collaborative recommender systems in certain circumstances, it could be desirable to merge recommender system databases between companies, thus expanding the data pool. This can lead to privacy disclosure hazards during the merging process. This paper addresses how to avoid privacy disclosure in collaborative recommender systems by comparing with major cryptology approaches and constructing a more efficient privacy-preserving collaborative recommender system based on the scalar product protocol.
机译:协作推荐系统使用各种类型的信息来帮助客户找到具有个性化兴趣的产品。为了在某​​些情况下提高协作推荐系统的有用性,可能需要在公司之间合并推荐系统数据库,从而扩展数据池。在合并过程中,这可能会导致隐私披露风险。本文通过与主要的密码学方法进行比较,并基于标量积协议构建更有效的隐私保护协作推荐系统,来解决如何避免协作推荐系统中的隐私泄露。

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