International audienceCollaborative ltering-based recommender systems exploit user preferences about items to provide them with recommendations. These preferences are generally ratings. However, choosing a rating is no easy task for any user; the rating scale is usually reduced and the rating values given by the users may be in uenced by many factors. The rat- ings are thus not completely trustworthy. This paper is a rst attempt at studying the expression of preferences in collaborative ltering under the form of preference relations instead of ratings. When using preference relations, users are asked to compare pairs of resources. We propose new measures to compute recommendations using preference relations. First experiments have been cond...
Collaborative filtering is a very useful general technique for exploiting the preference patterns of...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
A preference relation-based Top-N recommendation approach is proposed to capture both second-order a...
Recommender systems use ratings from users on items such as movies and music for the purpose of pred...
Recommender systems try to provide people with recommendations of items they will appreciate, based ...
In this paper we report on a pilot user study aimed at evaluating two aspects of recommender systems...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Many popular internet platforms give personalized recommendations to their users, based on other use...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Abstract. Recommender systems suggest users information items they may be interested in. User profil...
In this thesis three different types of reccommender systems were compared: baseline predictor, coll...
Learning of preference relations has recently received significant attention in machine learning com...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Collaborative filtering is a very useful general technique for exploiting the preference patterns of...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
A preference relation-based Top-N recommendation approach is proposed to capture both second-order a...
Recommender systems use ratings from users on items such as movies and music for the purpose of pred...
Recommender systems try to provide people with recommendations of items they will appreciate, based ...
In this paper we report on a pilot user study aimed at evaluating two aspects of recommender systems...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Many popular internet platforms give personalized recommendations to their users, based on other use...
Preference learning (PL) plays an important role in machine learning research and practice. PL works...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Abstract. Recommender systems suggest users information items they may be interested in. User profil...
In this thesis three different types of reccommender systems were compared: baseline predictor, coll...
Learning of preference relations has recently received significant attention in machine learning com...
Recommender systems typically use collaborative filtering: information from your preferences (i.e. y...
We describe a recommender system which uses a unique combination of content-based and collaborative...
Collaborative filtering is a very useful general technique for exploiting the preference patterns of...
To alleviate the issue of data sparsity in collaborative filtering (CF), a number of trust-aware rec...
A preference relation-based Top-N recommendation approach is proposed to capture both second-order a...