International audienceRecommendation systems help users identify interesting content, but they also open new privacy threats. In this paper, we deeply analyze the effect of a Sybil attack that tries to infer information on users from a user-based collaborative-filtering recommendation systems. We discuss the impact of different similarity metrics used to identity users with similar tastes in the trade-off between recommendation quality and privacy. Finally, we propose and evaluate a novel similarity metric that combines the best of both worlds: a high recommendation quality with a low prediction accuracy for the attacker. Our results, on a state-of-the-art recommendation framework and on real datasets show that existing similarity metrics e...
Recommender systems play an essential role in our digital society as they suggest products to purcha...
Collaborative Filtering (CF) is a successful technology that has been implemented in E-commerce reco...
Abstract — Collaborative filtering (CF) is a very important and common technology for recommender sy...
International audienceRecommendation systems help users identify interesting content, but they also ...
International audienceRecommenders have become a fundamental tool to navigate the huge amount of inf...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommendation systems try to infer their users’ interests in order to suggest items relevant to the...
Privacy-preserving collaborative filtering is an emerging web-adaptation tool to cope with informati...
Recommender systems are highly vulnerable to shilling attacks, both by individuals and groups. Attac...
In this paper we examine an advanced collaborative filtering method that uses similarity transitivit...
Similarity metrics play a key role in case-based reasoning: an effective retrieval step is a premise...
Collaborative filtering techniques have been successfully em-ployed in recommender systems in order ...
© 2015 Wiley Periodicals, Inc. Collaborative filtering (CF) is the most popular approach in personal...
In collaborative filtering recommender systems, users cannot get involved in the choice of their pee...
In collaborative filtering recommender systems, users cannot get involved in the choice of their pee...
Recommender systems play an essential role in our digital society as they suggest products to purcha...
Collaborative Filtering (CF) is a successful technology that has been implemented in E-commerce reco...
Abstract — Collaborative filtering (CF) is a very important and common technology for recommender sy...
International audienceRecommendation systems help users identify interesting content, but they also ...
International audienceRecommenders have become a fundamental tool to navigate the huge amount of inf...
Abstract Despite its success, similarity-based collaborative filtering suffers from some limitations...
Recommendation systems try to infer their users’ interests in order to suggest items relevant to the...
Privacy-preserving collaborative filtering is an emerging web-adaptation tool to cope with informati...
Recommender systems are highly vulnerable to shilling attacks, both by individuals and groups. Attac...
In this paper we examine an advanced collaborative filtering method that uses similarity transitivit...
Similarity metrics play a key role in case-based reasoning: an effective retrieval step is a premise...
Collaborative filtering techniques have been successfully em-ployed in recommender systems in order ...
© 2015 Wiley Periodicals, Inc. Collaborative filtering (CF) is the most popular approach in personal...
In collaborative filtering recommender systems, users cannot get involved in the choice of their pee...
In collaborative filtering recommender systems, users cannot get involved in the choice of their pee...
Recommender systems play an essential role in our digital society as they suggest products to purcha...
Collaborative Filtering (CF) is a successful technology that has been implemented in E-commerce reco...
Abstract — Collaborative filtering (CF) is a very important and common technology for recommender sy...