Towards Fully Distributed and Privacy-Preserving Recommendations via Expert Collaborative Filtering and RESTful Linked Data

Jae-wook Ahn, X. Amatriain
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引用次数: 18

Abstract

Expert Collaborative Filtering is an approach to recommender systems in which recommendations for users are derived from ratings coming from domain experts rather than peers. In this paper we present an implementation of this approach in the music domain. We show the applicability of the model in this setting, and show how it addresses many of the shortcomings in traditional Collaborative Filtering such as possible privacy concerns. We also describe a number of technologies and an architectural solution based on REST and the use of Linked Data that can be used to implement a completely distributed and privacy-preserving recommender system.
通过专家协同过滤和RESTful关联数据实现完全分布式和隐私保护建议
专家协同过滤是推荐系统的一种方法,其中用户的推荐来自领域专家而不是同行的评分。在本文中,我们提出了这种方法在音乐领域的实现。我们展示了该模型在这种情况下的适用性,并展示了它如何解决传统协同过滤中的许多缺点,例如可能存在的隐私问题。我们还描述了一些技术和基于REST的架构解决方案,以及关联数据的使用,可以用来实现一个完全分布式和隐私保护的推荐系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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