协同过滤推荐系统中隐私保护的关键研究:挑战、最新方法和未来方向

Usra Abid, M. Ashraf, M. U. Butt
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引用次数: 3

摘要

近年来,推荐系统变得非常流行,并被用于不同的技术领域。基于记忆的协同过滤(CF)推荐系统是一个快速发展的研究领域,并被证明在不同类型的推荐系统中都表现良好。基于记忆的CF根据用户之前评价过的整个项目集合来推荐项目。CF基于内存中的邻居生成推荐,称为基于内存的CF。在本研究中,我们讨论了推荐系统面临的主要挑战,即直接访问用户数据,导致隐私风险,并可能成为攻击和其他风险的原因。针对上述挑战,我们对不同的风险进行了全面的调查,并进行了批判性的分析。此外,我们还调查了目前用于解决这些挑战的最先进的方法。基于这些发现,目前的研究将提出现有的方法来降低基于记忆的CF的隐私风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Critical Survey On Privacy Prevelling In Collaborative Filtring Recomender System: Challenges, State-Of-The-Art Methods And Future Directions
Recommender systems have become very popular in recent years and are used in different fields of technology. Memory-based Collaborative Filtering (CF) Recommender System is a quickly progressing study area and proved to be doing well for different types of recommender systems. Memory-based CF recommends items based on the entire collection of items which have been rated by users previously. CF generates recommendations on the basis of neighbors in memory and known as Memory based CF. In this study, we have discussed a major challenge for recommender system that has direct access to user data that leads to privacy risk and may become the cause of attacks and other risks. Leading to the above challenges, we have conducted a comprehensive survey of different risks and analyzed them critically. Moreover, we have investigated the existing state-of-the-art approaches which are being used to address such challenges. Based on findings, the current study will come up with existing approaches that reduce privacy risks for Memory-based CF.
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