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A personal data store approach for recommender systems: enhancing privacy without sacrificing accuracy

机译:推荐系统的个人数据存储方法:在不牺牲准确性的情况下增强隐私

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摘要

Recommender systems have become extremely common in recent years, and are applied in a variety of domains. Existing recommender systems exhibit two major limitations: (1) Privacy - each service provider holds a database that contains information about all of its users; and (2) Partial view - when recommending to users, each such service can rely only on data that were collected by the service itself.The Open Personal Data Store (openPDS) architecture was recently suggested for storing personal data in a privacy preserving way. Inspired by openPDS, we suggest a novel architecture for recommender systems that overcomes the two limitations mentioned above. The suggested architecture allows the recommender system to utilize rich data collected about the user (possibly through other services) to produce more accurate recommendations, while allowing its users to manage and gain control over their own data.We evaluate the suggested architecture on two different use cases: movies and web browsing, and compare its performance with that of a popular non-privacy-aware collaborative-filtering algorithm. We find that in comparison to the alternative approach, our approach is able to enhance privacy significantly without sacrificing the accuracy level of the recommendations (and in some cases providing even higher level of accuracy). (C) 2019 Elsevier Ltd. All rights reserved.
机译:推荐系统在最近几年变得极为普遍,并已应用于各种领域。现有的推荐系统存在两个主要限制:(1)隐私-每个服务提供商都拥有一个数据库,其中包含有关其所有用户的信息; (2)部分视图-在向用户推荐时,每个此类服务只能依赖于服务本身收集的数据。最近建议使用开放式个人数据存储(openPDS)架构以隐私保护的方式存储个人数据。受openPDS的启发,我们建议了一种用于推荐系统的新颖体系结构,该体系结构可以克服上述两个限制。建议的体系结构允许推荐系统利用收集到的有关用户的丰富数据(可能通过其他服务)来生成更准确的建议,同时允许其用户管理和控制自己的数据。案例:电影和Web浏览,并将其性能与流行的非隐私感知协作过滤算法的性能进行比较。我们发现,与替代方法相比,我们的方法能够在不牺牲建议准确性的情况下(在某些情况下甚至提供更高的准确性)显着增强隐私性。 (C)2019 Elsevier Ltd.保留所有权利。

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