International audienceWith the widespread use of Internet, recommender systems are becoming increasingly adapted to resolve the problem of information overload and to deal with large amount of on line information. Several approaches and techniques have been proposed to implement recommender systems. Most of them rely on flat data representation while most real world data are stored in relational databases. This paper proposes a new recommendation approach that explores the relational nature of the data in hand using relational Bayesian networks (RBNs)
Recommender systems seek to predict the rating that a user would give an item, given the data of the...
Abstract:- This research introduces personalized recommendation service into library services. Using...
Traditional recommender systems create models that can predict user interests based on the user-item...
In the era of digital world and WWW, most of the human activities have slowly started to be tightly ...
Recommender systems have revolutionized the way users discover and engage with content. Moving beyon...
Recommender systems and their evaluation have been widely studied topics since more than past two de...
Recommender systems are important to help users se-lect relevant and personalised information over m...
This thesis consists of three papers on recommender systems. The first paper addresses the problem o...
Recommender systems are important to help users select relevant and personalised informa-tion over m...
Abstract. Recommender system a new marketing strategy plays an important role particularly in an ele...
Recent developments with Neural Networks produced models which are capable of encoding graph struct...
This thesis consists of three papers on recommender systems. The first paper addresses the problem...
Abstract—Most recommendations are made based on the computation of user specified constraints or fun...
In recent years, there have been more and more enterprises using Web sites for marketing of various ...
Abstract: This research introduces personalized recommendation service into library services. Using ...
Recommender systems seek to predict the rating that a user would give an item, given the data of the...
Abstract:- This research introduces personalized recommendation service into library services. Using...
Traditional recommender systems create models that can predict user interests based on the user-item...
In the era of digital world and WWW, most of the human activities have slowly started to be tightly ...
Recommender systems have revolutionized the way users discover and engage with content. Moving beyon...
Recommender systems and their evaluation have been widely studied topics since more than past two de...
Recommender systems are important to help users se-lect relevant and personalised information over m...
This thesis consists of three papers on recommender systems. The first paper addresses the problem o...
Recommender systems are important to help users select relevant and personalised informa-tion over m...
Abstract. Recommender system a new marketing strategy plays an important role particularly in an ele...
Recent developments with Neural Networks produced models which are capable of encoding graph struct...
This thesis consists of three papers on recommender systems. The first paper addresses the problem...
Abstract—Most recommendations are made based on the computation of user specified constraints or fun...
In recent years, there have been more and more enterprises using Web sites for marketing of various ...
Abstract: This research introduces personalized recommendation service into library services. Using ...
Recommender systems seek to predict the rating that a user would give an item, given the data of the...
Abstract:- This research introduces personalized recommendation service into library services. Using...
Traditional recommender systems create models that can predict user interests based on the user-item...