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On Privacy Preserving Collaborative Filtering: Current Trends, Open Problems, and New Issues

机译:隐私保留协作过滤:当前趋势,打开问题和新问题

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Automatic recommender systems have become a cornerstone of e-commerce, especially after the great welcome of Web 2.0 based on participation and interaction of Internet users. Collaborative Filtering (CF) is a recommender system that is becoming increasingly relevant for the industry due to the growth of the Internet, which has made it much more difficult to effectively extract useful information. In this paper, we introduce a taxonomy of the different CF families and we discuss the most relevant Privacy Preserving Collaborative Filtering (PPCF) methods in the literature. To understand the inherent challenges of the PPCF, we also conduct an overview of the current tendencies and major drawbacks of this kind of recommender systems, and we propose several strategies to overcome the shortcomings.
机译:自动推荐系统已成为电子商务的基石,特别是在Web 2.0的广泛欢迎之后,基于互联网用户的互动。协作过滤(CF)是一种推荐制度,由于互联网的增长,对行业越来越相关,这使得能够有效地提取有用信息更加困难。在本文中,我们介绍了不同的CF家族的分类,我们讨论了文献中最相关的保护滤波(PPCF)方法的最相关的隐私。要了解PPCF的固有挑战,我们还概述了这种推荐系统的当前趋势和主要缺点,并提出了几种策略来克服缺点。

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