I Know Nothing about You But Here is What You Might Like

R. Guerraoui, Anne-Marie Kermarrec, Rhicheek Patra, Mahammad Valiyev, Jingjing Wang
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引用次数: 11

Abstract

Recommenders widely use collaborative filtering schemes. These schemes, however, threaten privacy as user profiles are made available to the service provider hosting the recommender and can even be guessed by curious users who analyze the recommendations. Users can encrypt their profiles to hide them from the service provider and add noise to make them difficult to guess. These precautionary measures hamper latency and recommendation quality. In this paper, we present a novel recommender, X-REC, enabling an effective collaborative filtering scheme to ensure the privacy of users against the service provider (system-level privacy) or other users (user-level privacy). X-REC builds on two underlying services: X-HE, an encryption scheme designed for recommenders, and X-NN, a neighborhood selection protocol over encrypted profiles. We leverage uniform sampling to ensure differential privacy against curious users. Our extensive evaluation demonstrates that X-REC provides (1) recommendation quality similar to non-private recommenders, and (2) significant latency improvement over privacy-aware alternatives.
我对你一无所知,但这是你可能喜欢的
推荐器广泛使用协同过滤方案。然而,这些方案会威胁到用户的隐私,因为用户的个人资料可以提供给托管推荐的服务提供商,甚至可以被好奇的用户在分析推荐时猜测出来。用户可以加密他们的个人资料,以隐藏他们的服务提供商,并增加噪音,使他们难以猜测。这些预防措施会影响延迟和推荐质量。在本文中,我们提出了一种新的推荐器X-REC,它实现了一种有效的协同过滤方案,以确保用户的隐私不受服务提供商(系统级隐私)或其他用户(用户级隐私)的侵犯。X-REC建立在两个底层服务之上:X-HE,一个为推荐人设计的加密方案,和X-NN,一个加密配置文件的邻居选择协议。我们利用统一的采样,以确保不同的隐私对好奇的用户。我们的广泛评估表明,X-REC提供了(1)与非私人推荐器相似的推荐质量,(2)与隐私感知替代方案相比,延迟显著改善。
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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