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Defending recommender systems: detection of profile injection attacks

机译:捍卫推荐系统:检测配置文件注入攻击

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摘要

Collaborative recommender systems are known to be highly vulnerable to profile injection attacks, attacks that involve the insertion of biased profiles into the ratings database for the purpose of altering the system’s recommendation behavior. Prior work has shown when profiles are reverse engineered to maximize influence; even a small number of malicious profiles can significantly bias the system. This paper describes a classification approach to the problem of detecting and responding to profile injection attacks. A number of attributes are identified that distinguish characteristics present in attack profiles in general, as well as an attribute generation approach for detecting profiles based on reverse engineered attack models. Three well-known classification algorithms are then used to demonstrate the combined benefit of these attributes and the impact the selection of classifier has with respect to improving the robustness of the recommender system. Our study demonstrates this technique significantly reduces the impact of the most powerful attack models previously studied, particularly when combined with a support vector machine classifier.
机译:众所周知,协作推荐系统极易受到配置文件注入攻击的攻击,这些攻击涉及将有偏差的配置文件插入到评级数据库中,目的是更改系统的推荐行为。事前研究表明,对型材进行反向工程以最大程度地发挥影响。即使是少量的恶意配置文件也可能严重影响系统。本文介绍了一种用于检测和响应配置文件注入攻击的问题的分类方法。识别出许多属性,这些属性通常可以区分攻击特征中存在的特征,以及用于基于反向工程攻击模型检测特征的属性生成方法。然后,使用三种众所周知的分类算法来证明这些属性的综合好处,以及选择分类器对提高推荐系统的鲁棒性的影响。我们的研究表明,该技术可显着降低以前研究的最强大攻击模型的影响,尤其是与支持向量机分类器结合使用时。

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