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User Privacy Concerns with Common Data Used in Recomraender Systems

机译:推荐系统中使用的通用数据的用户隐私问题

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Recommender systems, and personalization algorithms more broadly, have become an integral part of modern e-commerce, streaming, and social media services. Collaborative filtering in particular leverages users' ratings to compute new items of interest. The algorithms that drive them use a variety of data, from user ratings to measures of social relationships. As a field, we have built more effective, accurate algorithms with the available data. However, recommender systems are often opaque to users, and users' privacy concerns about the data these algorithms use is unknown. In this project, we administered a survey to nearly 1,000 subjects to gauge their opinions about privacy issues tied to a variety of common personal data points used in making recommendations and the ways that data is used. We found that data collected within in an application is generally of low concern, while the use of social data and data obtained from third parties is often considered a privacy violation. Furthermore, users expressed discomfort with their data being used anonymously to help personalize content for others - a common practice in collaborative filtering. We discuss the survey results and implications for creating privacy-respecting recommender systems.
机译:推荐系统和更广泛的个性化算法已成为现代电子商务,流媒体和社交媒体服务不可或缺的一部分。协作过滤特别是利用用户的评分来计算新的关注项目。驱动它们的算法使用各种数据,从用户评分到社会关系测度。作为一个领域,我们利用可用数据构建了更有效,更准确的算法。但是,推荐系统通常对用户是不透明的,并且用户对这些算法使用的数据的隐私关注是未知的。在这个项目中,我们对近1,000名受试者进行了一项调查,以评估他们对隐私问题的意见,这些隐私问题与提出建议时使用的各种常见个人数据点和数据使用方式有关。我们发现,在应用程序内收集的数据通常很少受到关注,而使用社交数据和从第三方获得的数据通常被视为侵犯隐私。此外,用户对他们的数据被匿名使用以帮助他人个性化内容表示不满,这是协作过滤的一种常见做法。我们讨论了调查结果及其对创建尊重隐私的推荐系统的影响。

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