We propose a mechanism to preserve privacy while leveraging user profiles in distributed recommender systems. Our approach relies on (i ) an original obfuscation mechanism hiding the exact profiles of users without significantly decreasing their utility, as well as (ii ) a randomized dissemination algorithm ensuring differential privacy during the dissemination process. We evaluate our system against an alternative providing differential privacy both during profile construction and dissemination. Results show that our solution preserves accuracy without the need for users to reveal their preferences. Our approach is also flexible and more robust to censorship
Recommendation systems are information-filtering systems that help users deal with information overl...
Recommender systems are commonly trained on centrally collected user interaction data like views or ...
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...
We propose a new mechanism to preserve privacy while leveraging user profiles in distributed recomme...
Abstract. We propose a new mechanism to preserve privacy while lever-aging user profiles in distribu...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
Current implementations of the Collaborative Filtering (CF) algorithm are mostly centralized and the...
In recommender systems, usually, a central server needs to have access to users' profiles in order t...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
This chapter investigates ways to deal with privacy rules when modeling preferences of users in reco...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Collaborative Filtering (CF) is an attractive and reliable recommendation technique. CF is typically...
Recommendation systems are information-filtering systems that help users deal with information overl...
Recommender systems are commonly trained on centrally collected user interaction data like views or ...
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...
We propose a new mechanism to preserve privacy while leveraging user profiles in distributed recomme...
Abstract. We propose a new mechanism to preserve privacy while lever-aging user profiles in distribu...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
Collaborative Filtering (CF) is a powerful technique for generating personalized predictions. CF sys...
Current implementations of the Collaborative Filtering (CF) algorithm are mostly centralized and the...
In recommender systems, usually, a central server needs to have access to users' profiles in order t...
Focusing on the privacy issues in recommender systems, we propose a framework containing two perturb...
State-of-the-art recommender systems produce high-quality recommendations to support users in findin...
This chapter investigates ways to deal with privacy rules when modeling preferences of users in reco...
Collaborative filtering plays an essential role in a recommender system, which recommends a list of ...
Collaborative Filtering (CF) is an attractive and reliable recommendation technique. CF is typically...
Recommendation systems are information-filtering systems that help users deal with information overl...
Recommender systems are commonly trained on centrally collected user interaction data like views or ...
Abstract. While recommender systems based on collaborative filtering have be-come an essential tool ...