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BS-SC: An Unsupervised Approach for Detecting Shilling Profiles in Collaborative Recommender Systems

机译:BS-SC:一种无监督的方法,用于检测协作推荐系统中的先令轮廓

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摘要

Collaborative recommender systems are vulnerable to shilling attacks. To address this issue, many methods including supervised and unsupervised have been proposed. However, supervised detection methods require training classifiers and they only apply to detect known types of attacks. The existing unsupervised detection methods need to know the prior knowledge of attacks, otherwise they suffer from low detection precision. In this paper, we present BS-SC, an unsupervised approach for detecting shilling profiles, which does not need to know the attack size or to label the candidate spammers. BS-SC starts from an in-depth analysis of user behaviors and uses two key mechanisms (i.e., behavior features extraction and behavior similarity matrix clustering) to distinguish shilling profiles from genuine ones. The behavior features reflect the behavior difference between genuine and shilling profiles, and the behavior similarity matrix clustering is to cluster shilling profiles based on their highly similar behaviors. Experimental results on the MovieLens and the sampled Amazon review datasets indicate that BS-SC outperforms the baseline unsupervised approaches, even when the prior knowledge is given for them.
机译:协作推荐系统容易攻击攻击。为解决这个问题,提出了许多包括监督和无监督的方法。然而,监督检测方法需要培训分类器,并且它们仅适用于检测已知类型的攻击。现有的无监督检测方法需要了解攻击的先前知识,否则它们遭受低检测精度。在本文中,我们提出了BS-SC,一种无监督的方法,用于检测先令曲线,这不需要知道攻击尺寸或标记候选垃圾邮件发送者。 BS-SC从用户行为的深入分析开始,并使用两个密钥机制(即,行为特征提取和行为相似度矩阵聚类)来区分从真实的旋转配置文件。行为特征反映了正版和先令配置文件之间的行为差​​异,并且行为相似性矩阵群集是基于其高度相似的行为来群集先令配置文件。 Movielens的实验结果和采样的亚马逊审查数据集表明BS-SC优于基线无监督的方法,即使给出了先前的知识。

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