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Defending shilling attacks in recommender systems using soft co-clustering

机译:使用软共聚防御防御推荐系统中的先令攻击

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摘要

Shilling attacks have been a significant vulnerability to collaborative filtering based recommender systems recently. There are various studies focusing on detecting shilling attack users and developing robust recommendation algorithms against shilling attacks. Although many studies have been devoted in this area, few of them use soft co-clustering and consider both labelled and unlabelled user profiles. In this work, the authors explore the benefits of combining soft co-clustering algorithm with user propensity similarity method and present a soft co-clustering with propensity similarity model or CCPS for short, to detect shilling attacks. Then they perform experiments using MovieLens dataset and Jester dataset to analyse it with respect to shilling attack detection to demonstrate the effectiveness of CCPS model in detecting traditional and hybrid shilling attacks and enhance the robustness of recommender systems.
机译:最近,先令攻击已成为基于协作筛选的推荐系统的重要漏洞。有各种研究专注于检测先令攻击用户并开发针对先令攻击的鲁棒推荐算法。尽管已经在该领域进行了许多研究,但很少有研究使用软共聚并同时考虑标记和未标记的用户配置文件。在这项工作中,作者探索了将软共聚算法与用户倾向相似性方法相结合的好处,并提出了一种具有倾向相似性模型或CCPS的软共聚,以检测先令攻击。然后,他们使用MovieLens数据集和Jester数据集进行实验,以针对先令攻击检测进行分析,以证明CCPS模型在检测传统和混合先令攻击中的有效性,并增强推荐系统的鲁棒性。

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