论文标题
保护隐私的协作过滤
Survey of Privacy-Preserving Collaborative Filtering
论文作者
论文摘要
协作过滤建议系统根据用户的过去偏好以及其他具有相似兴趣的用户的偏好为用户提供建议。近年来,推荐系统的使用已广泛增长,帮助人们选择要看的电影,阅读书籍和要购买的物品。但是,用户通常会担心他们在使用此类系统时的隐私,许多用户不愿向大多数在线服务提供准确的信息。隐私权协作过滤建议系统旨在为用户提供准确的建议,同时保持对数据隐私的某些保证。这项调查研究了有关保护隐私性协作过滤的最新文献,提供了该领域的广泛视角,并使用两个不同的标准对文献中的关键贡献进行了分类:它们解决的脆弱性类型以及它们用于解决该的方法的类型。
Collaborative filtering recommendation systems provide recommendations to users based on their own past preferences, as well as those of other users who share similar interests. The use of recommendation systems has grown widely in recent years, helping people choose which movies to watch, books to read, and items to buy. However, users are often concerned about their privacy when using such systems, and many users are reluctant to provide accurate information to most online services. Privacy-preserving collaborative filtering recommendation systems aim to provide users with accurate recommendations while maintaining certain guarantees about the privacy of their data. This survey examines the recent literature in privacy-preserving collaborative filtering, providing a broad perspective of the field and classifying the key contributions in the literature using two different criteria: the type of vulnerability they address and the type of approach they use to solve it.