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Defending Suspected Users by Exploiting Specific Distance Metric in Collaborative Filtering Recommender Systems

机译:通过在协同过滤推荐系统中利用特定距离度量来保卫可疑用户

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Collaborative filtering recommender systems (CFRSs) are critical components of existing popular e-commerce websites to make personalized recommendations. In practice, CFRSs are highly vulnerable to "shilling" attacks or "profile injection" attacks due to its openness. A number of detection methods have been proposed to make CFRSs resistant to such attacks. However, some of them distinguished attackers by using typical similarity metrics, which are difficult to fully defend all attackers and show high computation time, although they can be effective to capture the concerned attackers in some extent. In this paper, we propose an unsupervised method to detect such attacks. Firstly, we filter out more genuine users by using suspected target items as far as possible in order to reduce time consumption. Based on the remained result of the first stage, we employ a new similarity metric to further filter out the remained genuine users, which combines the traditional similarity metric and the linkage information between users to improve the accuracy of similarity of users. Experimental results show that our proposed detection method is superior to benchmarked method.
机译:协作过滤推荐器系统(CFRS)是现有流行电子商务网站进行个性化推荐的关键组件。实际上,由于CFRS的开放性,因此极易遭受“先令”攻击或“轮廓注入”攻击。已经提出了许多检测方法来使CFRS抵抗这种攻击。但是,它们中的一些通过使用典型的相似性度量来区分攻击者,尽管它们在某种程度上可以有效地捕获相关的攻击者,但是它们很难完全防御所有攻击者并显示出很高的计算时间。在本文中,我们提出了一种无监督的方法来检测此类攻击。首先,我们通过尽可能多地使用可疑目标物品来筛选出更多真正的用户,以减少时间消耗。基于第一阶段的剩余结果,我们采用了新的相似性度量标准来进一步过滤掉剩余的真实用户,将传统的相似性度量标准与用户之间的链接信息相结合,提高了用户相似性的准确性。实验结果表明,本文提出的检测方法优于基准方法。

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