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Shilling Attack Detection in Recommender Systems via Selecting Patterns Analysis

机译:通过选择模式分析来检测推荐系统中的先发攻击

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Collaborative filtering (CF) has been widely used in recommender systems to generate personalized recommendations. However, recommender systems using CF are vulnerable to shilling attacks, in which attackers inject fake profiles to manipulate recommendation results. Thus, shilling attacks pose a threat to the credibility of recommender systems. Previous studies mainly derive features from characteristics of item ratings in user profiles to detect attackers, but the methods suffer from low accuracy when attackers adopt new rating patterns. To overcome this drawback, we derive features from properties of item popularity in user profiles, which are determined by users' different selecting patterns. This feature extraction method is based on the prior knowledge that attackers select items to rate with man-made rules while normal users do this according to their inner preferences. Then, machine learning classification approaches are exploited to make use of these features to detect and remove attackers. Experiment results on the MovieLens dataset and Amazon review dataset show that our proposed method improves detection performance. In addition, the results justify the practical value of features derived from selecting patterns.
机译:协作过滤(CF)已在推荐系统中广泛用于生成个性化推荐。但是,使用CF的推荐系统容易受到先发制人的攻击,攻击者在其中注入伪造的配置文件来操纵推荐结果。因此,先令攻击对推荐系统的信誉构成威胁。先前的研究主要从用户配置文件中项目评分的特征中得出特征以检测攻击者,但是当攻击者采用新的评分模式时,这些方法的准确性就会降低。为克服此缺点,我们从用户个人资料中项目受欢迎程度的属性中得出特征,这些特征由用户的不同选择模式决定。此特征提取方法基于先验知识,即攻击者选择项目以人为规则进行评分,而普通用户则根据其内部偏好进行选择。然后,利用机器学习分类方法来利用这些功能来检测和清除攻击者。在MovieLens数据集和Amazon评论数据集上的实验结果表明,我们提出的方法提高了检测性能。此外,结果证明了从选择图案中得出的特征的实用价值。

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