利用用户类型兴趣检测电影推荐系统中的配置文件注入攻击

Ghazaleh Aghili, M. Shajari, Shahram Khadivi, M. Morid
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引用次数: 10

摘要

随着电子商务服务中推荐系统的普及,配置文件注入攻击对推荐系统的鲁棒性和可信性构成了极大的威胁。这种攻击可以很容易地产生并插入到推荐系统中,以改变推荐结果。在这样的系统中,攻击者故意插入攻击配置文件,以改变系统输出,使其对自己有利。本文提出了在电影推荐系统中利用一组类型属性来区分攻击和真实配置文件的想法。由于攻击者通常在攻击配置文件中随机分配电影评级,因此攻击者和基于自己偏好对电影进行评级的真正用户的类型兴趣是不同的。基于这个想法,我们构建了一个使用类型属性作为前馈神经网络输入的系统,以检测攻击者。介绍了我们提出的方法的性能,并与其他检测方法进行了比较。结果表明,从查全率和查全率的角度来看,我们提出的方法具有优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Genre Interest of Users to Detect Profile Injection Attacks in Movie Recommender Systems
While the popularity of recommender systems is growing rapidly in e-commerce services, profile injection attacks are a great threat to their robustness and trustworthiness. Such attacks can be easily produced and inserted in recommender systems to alter the recommendation results. In such systems, attackers intentionally insert attack profiles to change the systems output to their advantage. This paper presents the idea of utilizing a set of genre attributes in order to discriminate between attack and genuine profiles in a movie recommender system. Since attackers typically assign random ratings to the movies in attack profiles, the genre interest of attackers and genuine users who rate movies based on their preferences are different. Based on this idea, we build a system using genre attributes as inputs to a feed forward neural network in order to detect attackers. The performance of our proposed approach is presented and compared to other detection approaches. The results declare superiority of our proposed approach from precision and recall point of view.
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