Title :
Detecting Profile Injection Attacks in Collaborative Recommender Systems
Author :
Burke, Robin ; Mobasher, Bamshad ; Williams, Chad ; Bhaumik, Runa
Author_Institution :
Center for Web Intelligence, DePaul Univ., Chicago, IL
Abstract :
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. In prior work, we and others have identified a number of models for such attacks and shown their effectiveness. This paper describes a classification approach to the problem of detecting and responding to profile injection attacks. This technique significantly reduces the effectiveness of the most powerful attack models previously studied
Keywords :
groupware; information filters; pattern classification; security of data; classification approach; collaborative recommender systems; profile injection attack detection; Collaboration; Collaborative work; Computer science; Cost function; Deductive databases; Filtering; Information systems; Power system modeling; Recommender systems; Robustness;
Conference_Titel :
E-Commerce Technology, 2006. The 8th IEEE International Conference on and Enterprise Computing, E-Commerce, and E-Services, The 3rd IEEE International Conference on
Conference_Location :
San Francisco, CA
Print_ISBN :
0-7695-2511-3
DOI :
10.1109/CEC-EEE.2006.34