Using the beta distribution technique to detect attacked items from collaborative filtering

Author:

Hsu Ping-Yu1,Chung Jui-Yi1,Liu Yu-Chin2

Affiliation:

1. Department of Business Administration, National Central University, Jhongli, Taoyuan, Taiwan

2. Department of Information Management, Shih Hsin University, Taipei, Taiwan

Abstract

A recommendation system is based on the user and the items, providing appropriate items to the user and effectively helping the user to find items that may be of interest. The most commonly used recommendation method is collaborative filtering. However, in this case, the recommendation system will be injected with false data to create false ratings to push or nuke specific items. This will affect the user’s trust in the recommendation system. After all, it is important that the recommendation system provides a trusted recommendation item. Therefore, there are many algorithms for detecting attacks. In this article, it proposes a method to detect attacks based on the beta distribution. Different researchers in the past assumed that the attacker only attacked one target item in the user data. This research simulated an attacker attacking multiple target items in the experiment. The result showed a detection rate of more than 80%, and the false rate was within 16%.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Theoretical Computer Science

Reference33 articles.

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3. A. Whitrby, A. Jøsang and J. Indulska, Filtering out unfair ratings in Bayesian reputation system, In Proceedings of the Third International Joint Conference on Autonomous Agents and Multi Agent Systems, 2004.

4. B. Mehta, T. Hofmann and P. Fankhauser, Lies and propaganda: Detecting spam users in collaborative filtering, In Proceedings of the 12th International Conference on Intelligent User Interfaces, Honolulu Hi USA, 2007.

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