International audienceRecommending appropriate content and users is a critical feature of on-line social networks. Computing accurate recommendations on very large datasets can however be particularly costly in terms of resources , even on modern parallel and distributed infrastructures. As a result, modern recommenders must generally trade-off quality and computational cost to reach a practical solution. This trade-off has however so far been largely left unexplored by the research community, making it difficult for practitioners to reach informed design decisions. In this paper, we investigate to which extent the additional computing costs of advanced recommendation techniques based on supervised classifiers can be balanced by the gains t...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
International audienceIn this paper we present a Friend Recommender System for micro-blogging. Tradi...
Two main approaches to using social network infor-mation in recommendation have emerged: augmenting ...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
With the overwhelming online products available in recent years, there is an increasing need to filt...
International audienceReal-time recommendation of Twitter users based on the content of their profil...
Recommender systems represent an important tool for news distribution on the Internet. In this work ...
textabstractRecommendation systems are important in social networks that allow the injection of user...
This study aims to develop a recommender system for social learning platforms that combine tradition...
Recommender systems are increasingly driving user experiences on the Internet. In recent years, onli...
The use of recommender systems is an emerging trend today, when user behavior information is abundan...
Recommender Systems (RS) currently represent a fundamental tool in online services, especially with ...
Recommending a personalised list of items to users is a core task for many online services such...
Recommender systems, software programs that learn from human behavior and make predictions of what p...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
International audienceIn this paper we present a Friend Recommender System for micro-blogging. Tradi...
Two main approaches to using social network infor-mation in recommendation have emerged: augmenting ...
International audienceRecommending appropriate content and users is a critical feature of on-line so...
In this thesis, we address the scalability problem of recommender systems. We propose accu rate and ...
With the overwhelming online products available in recent years, there is an increasing need to filt...
International audienceReal-time recommendation of Twitter users based on the content of their profil...
Recommender systems represent an important tool for news distribution on the Internet. In this work ...
textabstractRecommendation systems are important in social networks that allow the injection of user...
This study aims to develop a recommender system for social learning platforms that combine tradition...
Recommender systems are increasingly driving user experiences on the Internet. In recent years, onli...
The use of recommender systems is an emerging trend today, when user behavior information is abundan...
Recommender Systems (RS) currently represent a fundamental tool in online services, especially with ...
Recommending a personalised list of items to users is a core task for many online services such...
Recommender systems, software programs that learn from human behavior and make predictions of what p...
This thesis studies the opportunity to utilize posts from social media in recommender systems. Recom...
International audienceIn this paper we present a Friend Recommender System for micro-blogging. Tradi...
Two main approaches to using social network infor-mation in recommendation have emerged: augmenting ...