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PrivacyCanary: Privacy-Aware Recommenders with Adaptive Input Obfuscation

机译:PrivacyCanary:具有自适应输入混淆功能的可感知隐私的推荐器

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摘要

Recommender systems are widely used by online retailers to promote products and content that are most likely to be of interest to a specific customer. In such systems, users often implicitly or explicitly rate products they have consumed, and some form of collaborative filtering is used to find other users with similar tastes to whom the products can be recommended. While users can benefit from more targeted and relevant recommendations, they are also exposed to greater risks of privacy loss, which can lead to undesirable financial and social consequences. The use of obfuscation techniques to preserve the privacy of user ratings is well studied in the literature. However, works on obfuscation typically assume that all users uniformly apply the same level of obfuscation. In a heterogeneous environment, in which users adopt different levels of obfuscation based on their comfort level, the different levels of obfuscation may impact the users in the system in a different way. In this work we consider such a situation and make the following contributions: (a) using an offline dataset, we evaluate the privacy-utility trade-off in a system where a varying portion of users adopt the privacy preserving technique. Our study highlights the effects that each user's choices have, not only on their own experience but also on the utility that other users will gain from the system, and (b) we propose Privacy Canary, an interactive system that enables users to directly control the privacy-utility trade-off of the recommender system to achieve a desired accuracy while maximizing privacy protection, by probing the system via a private (i.e., undisclosed to the system) set of items. We evaluate the performance of our system with an off-line recommendations dataset, and show its effectiveness in balancing a target recommender accuracy with user privacy, compared to approaches that focus on a fixed privacy level.
机译:在线零售商广泛使用推荐系统来促销特定客户最可能感兴趣的产品和内容。在这样的系统中,用户经常隐式或显式地对他们已消费的产品进行评级,并且使用某种形式的协作过滤来查找具有相似品味的其他用户,向其推荐产品。尽管用户可以从更有针对性和相关性的建议中受益,但他们也面临更大的隐私丢失风险,这可能导致不良的财务和社会后果。在文献中已经很好地研究了使用混淆技术来保护用户评分的隐私。但是,有关混淆的工作通常假设所有用户都统一应用相同级别的混淆。在异构环境中,用户根据其舒适度级别采用不同级别的混淆,混淆级别可能会以不同的方式影响系统中的用户。在这项工作中,我们考虑了这种情况并做出了以下贡献:(a)使用离线数据集,我们评估了在不同用户部分采用隐私保护技术的系统中的隐私-效用折衷。我们的研究强调了每个用户的选择不仅对他们自己的体验有影响,而且还对其他用户将从该系统中获得的实用性产生影响,并且(b)我们提出了一个隐私系统Canary Canary,该系统使用户可以直接控制隐私权。推荐器系统的隐私-实用程序之间的权衡,以通过私有(即,系统未公开)的项目集对系统进行探测,从而在最大程度地保护隐私的同时实现所需的准确性。我们使用离线推荐数据集评估系统的性能,并显示出与专注于固定隐私级别的方法相比,该方法在平衡目标推荐者准确性和用户隐私方面的有效性。

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