Social tagging systems have become increasingly a popular way to organize online heterogeneous resources. Tag recommendation is a key feature of social tagging systems. Many works has been done to solve this hard tag recommendation problem and has got same good results these years. Taking into account the complexity of the tagging actions, there still exist many limitations. In this paper, we propose a probabilistic model to solve this tag recommendation problem. The model is based on Bayesian principle, and it's very robust and efficient. For evaluating our proposed method, we have conducted experiments on a real dataset extracted from BibSonomy, an online social bookmark and publication sharing system. Our performance study shows tha...
In this work we present a novel item recommendation ap-proach that aims at improving Collaborative F...
Collaborative tagging has emerged as a common solution for labelling and organising online digital c...
Abstract. Collaborative tagging systems are harnessing the power of online communities, making the t...
The emergence of Web 2.0 and the consequent success of social network websites such as del.icio.us a...
Abstract—In this work, we study the task of personalized tag recommendation in social tagging system...
Abstract. Collaborative tagging systems allow users to as-sign keywords—so called “tags”—to resource...
Tapping into the wisdom of the crowd, social tagging can be considered an alternative mechanism - as...
The challenge to provide tag recommendations for collaborative tagging systems has attracted quite s...
In this paper, we present a tag-based collaborative filter-ing recommendation method for use with re...
Multimedia data is known for its variety and also for the difficulty that comes in extracting releva...
International audienceTag recommendation aims to recommend to a userthe most suited tags for a given...
International audienceCollaborative tagging systems allow users to manually annotate web resources w...
AbstractTagging has emerged as a powerful mechanism that enables users to find and understand entiti...
Abstract. Recommendation algorithms and multi-class classifiers can support users of social bookmark...
Nowadays Web sites tend to be more and more social: users can upload any kind of information on coll...
In this work we present a novel item recommendation ap-proach that aims at improving Collaborative F...
Collaborative tagging has emerged as a common solution for labelling and organising online digital c...
Abstract. Collaborative tagging systems are harnessing the power of online communities, making the t...
The emergence of Web 2.0 and the consequent success of social network websites such as del.icio.us a...
Abstract—In this work, we study the task of personalized tag recommendation in social tagging system...
Abstract. Collaborative tagging systems allow users to as-sign keywords—so called “tags”—to resource...
Tapping into the wisdom of the crowd, social tagging can be considered an alternative mechanism - as...
The challenge to provide tag recommendations for collaborative tagging systems has attracted quite s...
In this paper, we present a tag-based collaborative filter-ing recommendation method for use with re...
Multimedia data is known for its variety and also for the difficulty that comes in extracting releva...
International audienceTag recommendation aims to recommend to a userthe most suited tags for a given...
International audienceCollaborative tagging systems allow users to manually annotate web resources w...
AbstractTagging has emerged as a powerful mechanism that enables users to find and understand entiti...
Abstract. Recommendation algorithms and multi-class classifiers can support users of social bookmark...
Nowadays Web sites tend to be more and more social: users can upload any kind of information on coll...
In this work we present a novel item recommendation ap-proach that aims at improving Collaborative F...
Collaborative tagging has emerged as a common solution for labelling and organising online digital c...
Abstract. Collaborative tagging systems are harnessing the power of online communities, making the t...