In the collaborative filtering recommender systems (CFRS) field, recommendation to group of users is mainly focused on stablished, occasional or random groups. These groups have a little number of users: relatives, friends, colleagues, etc. Our proposal deals with large numbers of automatically detected groups. Marketing and electronic commerce are typical targets of large homogenous groups. Large groups present a major difficulty in terms of automatically achieving homogeneity, equilibrated size and accurate recommendations. We provide a method that combines diverse machine learning algorithms in an original way: homogeneous groups are detected by means of a clustering based on hidden factors instead of ratings. Predictions are made using ...
In this paper, we consider a popular model for collabora-tive filtering in recommender systems where...
The recommender systems are recently becoming more significant in the age of rapid development of th...
The majority of recommender systems are designed to make recommendations for individual users. Howev...
Recommender systems apply information filtering technologies to identify a set of items that could b...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommending a personalised list of items to users is a core task for many online services such...
Recommender systems have proven their effectiveness in supporting personalised purchasing decisions ...
International audienceA collaborative filtering system (CF) aims at filtering huge amount of informa...
AbstractCollaborative filtering has been known to be the most successful recommender techniques in r...
Abstract. Recommender systems are playing a more and more important roles in people’s daily life and...
Recommender systems, as an effective personalization approach, can suggest best-suited items (produc...
International audienceCollaborative filtering (CF) systems aim at recommending a set of personalized...
Recommender systems were created to represent user preferences for the purpose of suggesting items t...
Abstract- Recommendation process plays an important role in many applications as W.W.W. Recommender ...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
In this paper, we consider a popular model for collabora-tive filtering in recommender systems where...
The recommender systems are recently becoming more significant in the age of rapid development of th...
The majority of recommender systems are designed to make recommendations for individual users. Howev...
Recommender systems apply information filtering technologies to identify a set of items that could b...
Rapid growth of E-commerce has made a huge number of products and services accessible to the users. ...
Recommending a personalised list of items to users is a core task for many online services such...
Recommender systems have proven their effectiveness in supporting personalised purchasing decisions ...
International audienceA collaborative filtering system (CF) aims at filtering huge amount of informa...
AbstractCollaborative filtering has been known to be the most successful recommender techniques in r...
Abstract. Recommender systems are playing a more and more important roles in people’s daily life and...
Recommender systems, as an effective personalization approach, can suggest best-suited items (produc...
International audienceCollaborative filtering (CF) systems aim at recommending a set of personalized...
Recommender systems were created to represent user preferences for the purpose of suggesting items t...
Abstract- Recommendation process plays an important role in many applications as W.W.W. Recommender ...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
In this paper, we consider a popular model for collabora-tive filtering in recommender systems where...
The recommender systems are recently becoming more significant in the age of rapid development of th...
The majority of recommender systems are designed to make recommendations for individual users. Howev...