基于项目协同过滤的安全多方协议

E. Shmueli, Tamir Tassa
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引用次数: 36

摘要

近年来,推荐系统已经变得非常普遍,并被用于各种领域,如电影、音乐、新闻、产品、餐馆等。虽然典型的推荐系统完全基于系统本身收集的用户偏好数据进行推荐,但如果几个推荐系统(或供应商)共享它们的数据,推荐的质量可以显著提高。然而,这种数据共享对供应商和用户都构成了重大的隐私和安全挑战。本文提出了分布式项目协同过滤的安全协议。我们的协议允许计算项目的预测评级及其预测排名,而不会损害隐私或预测的准确性。与以前的解决方案不同,在以前的解决方案中,安全协议仅由供应商执行,而我们的协议假定存在一个中介,该中介对供应商提供的加密数据执行中间计算。这种中介设置比非中介设置更有利,因为它使每个供应商能够单独与中介进行通信。这降低了通信成本,并允许每个供应商向其客户发布建议,而不依赖于其他供应商的可用性和合作意愿。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Secure Multi-Party Protocols for Item-Based Collaborative Filtering
Recommender systems have become extremely common in recent years, and are utilized in a variety of domains such as movies, music, news, products, restaurants, etc. While a typical recommender system bases its recommendations solely on users' preference data collected by the system itself, the quality of recommendations can significantly be improved if several recommender systems (or vendors) share their data. However, such data sharing poses significant privacy and security challenges, both to the vendors and the users. In this paper we propose secure protocols for distributed item-based Collaborative Filtering. Our protocols allow to compute both the predicted ratings of items and their predicted rankings, without compromising privacy nor predictions' accuracy. Unlike previous solutions in which the secure protocols are executed solely by the vendors, our protocols assume the existence of a mediator that performs intermediate computations on encrypted data supplied by the vendors. Such a mediated setting is advantageous over the non-mediated one since it enables each vendor to communicate solely with the mediator. This yields reduced communication costs and it allows each vendor to issue recommendations to its clients without being dependent on the availability and willingness of the other vendors to collaborate.
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