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Defending recommender systems by influence analysis

机译:通过影响分析捍卫推荐系统

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Collaborative filtering (CF) is a popular method for personalizing product recommendations for e-commerce applications. In order to recommend a product to a user and predict that user's preference, CF utilizes product evaluation ratings of like-minded users. The process of finding like-minded users forms a social network among all users and each link between two users represents an implicit connection between them. Users having more connections with others are the most influential users. Attacking recommender systems is a new issue for these systems. Here, an attacker tries to manipulate a recommender system in order to change the recommendation output according to her wish. If an attacker succeeds, her profile is used over and over again by the recommender system, making her an influential user. In this study, we applied the established attack detection methods to the influential users, instead of the whole user set, to improve their attack detection performance. Experiments were conducted using the same settings previously used to test the established methods. The results showed that the proposed influence-based method had better detection performance and improved the stability of a recommender system for most attack scenarios. It performed considerably better than established detection methods for attacks that inserted low numbers of attack profiles (20-25%).
机译:协作过滤(CF)是一种用于个性化电子商务应用程序产品推荐的流行方法。为了向用户推荐产品并预测用户的偏爱,CF利用志趣相投的用户的产品评估等级。查找志趣相投的用户的过程在所有用户之间形成了一个社交网络,两个用户之间的每个链接都代表了他们之间的隐式连接。与他人有更多联系的用户是最有影响力的用户。攻击推荐系统是这些系统的新问题。在这里,攻击者尝试操纵推荐系统,以便根据自己的意愿更改推荐输出。如果攻击者成功,推荐系统将一遍又一遍地使用她的个人资料,从而使她成为有影响力的用户。在这项研究中,我们将建立的攻击检测方法应用于有影响力的用户而不是整个用户组,以提高他们的攻击检测性能。使用先前用于测试已建立方法的相同设置进行实验。结果表明,所提出的基于影响的方法在大多数攻击情形下具有更好的检测性能,并提高了推荐系统的稳定性。对于插入了少量攻击配置文件(20-25%)的攻击,它的性能要比已建立的检测方法好得多。

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