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首页> 外文期刊>Journal of Intelligent Information Systems >Detecting abnormal profiles in collaborative filtering recommender systems
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Detecting abnormal profiles in collaborative filtering recommender systems

机译:在协作过滤推荐器系统中检测异常配置文件

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摘要

Personalization collaborative filtering recommender systems (CFRSs) are the crucial components of popular E-commerce services. In practice, CFRSs are also particularly vulnerable to "shilling" attacks or "profile injection" attacks due to their openness. The attackers can inject well-designed attack profiles into CFRSs in order to bias the recommendation results to their benefits. To reduce this risk, various detection techniques have been proposed to detect such attacks, which use diverse features extracted from user profiles. However, relying on limited features to improve the detection performance is difficult seemingly, since the existing features can not fully characterize the attack profiles and genuine profiles. In this paper, we propose a novel detection method to make recommender systems resistant to such attacks. The existing features can be briefly summarized as two aspects including rating behavior based and item distribution based. We firstly formulate the problem as finding a mapping model between rating behavior and item distribution by exploiting the least-squares approximate solution. Based on the trained model, we design a detector by employing a regressor to detect such attacks. Extensive experiments on both the MovieLens-100K and MovieLens-ml-latest-small datasets examine the effectiveness of the proposed detection method. Experimental results demonstrate the outperformance of the proposed approach in comparison with benchmarked method including KNN.
机译:个性化协作过滤推荐系统(CFRS)是流行的电子商务服务的关键组成部分。实际上,由于CFRS的开放性,它们也特别容易遭受“先令”攻击或“轮廓注入”攻击。攻击者可以将精心设计的攻击配置文件注入CFRS,以使推荐结果对他们有利。为了降低这种风险,已提出了各种检测技术来检测此类攻击,这些技术使用从用户配置文件中提取的各种功能。但是,由于现有功能无法完全表征攻击配置文件和真实配置文件,因此依靠有限的功能来提高检测性能似乎很难。在本文中,我们提出了一种新颖的检测方法,以使推荐系统可以抵抗此类攻击。现有功能可以简要概括为两个方面,包括基于评级行为和基于项目分布。我们首先将问题表述为通过利用最小二乘近似解找到评级行为与项目分布之间的映射模型。基于训练后的模型,我们通过使用回归器来检测此类攻击来设计检测器。在MovieLens-100K和MovieLens-ml-latest-small数据集上进行的大量实验检验了所提出的检测方法的有效性。实验结果表明,与包括KNN在内的基准测试方法相比,该方法具有更好的性能。

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