International audienceRecommenders have become a fundamental tool to navigate the huge amount of information available on the web. However, their ubiquitous presence comes with the risk of exposing sensitive user information. This paper explores this problem in the context of user-based collaborative filtering. We consider an active attacker equipped with externally available knowledge about the interests of users. The attacker creates fake identities based on this external knowledge and exploits the recommendations it receives to identify the items appreciated by a user. Our experiment on a real data trace shows that while the attack is effective, the inherent similarity between real users may be enough to protect at least part of their in...
© 2016 Elsevier Ltd Collaborative recommender systems offer a solution to the information overload p...
AbstractRecommendation systems and content-filtering approaches based on annotations and ratings ess...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
International audienceRecommenders have become a fundamental tool to navigate the huge amount of inf...
International audienceRecommendation systems help users identify interesting content, but they also ...
Recommendation systems try to infer their users’ interests in order to suggest items relevant to the...
Abstract. While recommender systems based on collaborative filtering have be-come an essential tool ...
We propose a mechanism to preserve privacy while leveraging user profiles in distributed recommender...
Collaborative Filtering (CF) is an attractive and reliable recommendation technique. CF is typically...
In recommender systems, usually, a central server needs to have access to users' profiles in order t...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
Collaborative Filtering (CF) techniques are becoming increasingly popular with the evolution of the ...
© 2016 Elsevier Ltd Collaborative recommender systems offer a solution to the information overload p...
AbstractRecommendation systems and content-filtering approaches based on annotations and ratings ess...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
International audienceRecommenders have become a fundamental tool to navigate the huge amount of inf...
International audienceRecommendation systems help users identify interesting content, but they also ...
Recommendation systems try to infer their users’ interests in order to suggest items relevant to the...
Abstract. While recommender systems based on collaborative filtering have be-come an essential tool ...
We propose a mechanism to preserve privacy while leveraging user profiles in distributed recommender...
Collaborative Filtering (CF) is an attractive and reliable recommendation technique. CF is typically...
In recommender systems, usually, a central server needs to have access to users' profiles in order t...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
This dissertation studies data privacy preservation in collaborative filtering based recommender sys...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
Collaborative Filtering (CF) techniques are becoming increasingly popular with the evolution of the ...
© 2016 Elsevier Ltd Collaborative recommender systems offer a solution to the information overload p...
AbstractRecommendation systems and content-filtering approaches based on annotations and ratings ess...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...