International audienceRecommender systems are an answer to information overload on the web. They filter and present to customer, a small subset of items that he is most likely to be interested in. Since user's interests may change over time, accurately capturing these dynamics is important, though challenging. The Session-based Temporal Graph (STG) has been proposed by Xiang et al. to provide temporal recommendations by combining long-and short-term preferences. Later, Yu et al. have introduced an extension called Topic-STG, which takes into account topics extracted from tweets' textual information. Recently, we pushed the idea further and proposed Content-based STG. However, in all these frameworks, the importance of links does not depend ...
The rapid development of the World Wide Web has created massive information leading to the informati...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
International audienceRecommender systems are an answer to information overload on the web. They fil...
Several researches on recommender systems are based on explicit rating data, but in many real world ...
Recommending appropriate items to users is crucial in many e-commerce platforms that propose a large...
ABSTRACT Micro-blogging is experiencing fantastic success in the worldwide. However, during its rapi...
La recommandation des produits appropriés aux clients est cruciale dans de nombreuses plateformes de...
Topic recommendation can help users deal with the information overload issue in micro-blogging commu...
Due to their first-hand, diverse and evolution-aware reflection of nearly all areas of life, heterog...
Recommender Systems suggest items that are likely to be the most interesting for users, based on the...
Incorporating the temporal property of queries into time-aware information access methods has been s...
Topic recommendation can help users deal with the information overload issue in micro-blogging commu...
Random walks on bipartite networks have been used extensively to design personalized recommendation ...
Abstract — Nowadays, Online Social Networks have given the opportunity to users to share their inter...
The rapid development of the World Wide Web has created massive information leading to the informati...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
International audienceRecommender systems are an answer to information overload on the web. They fil...
Several researches on recommender systems are based on explicit rating data, but in many real world ...
Recommending appropriate items to users is crucial in many e-commerce platforms that propose a large...
ABSTRACT Micro-blogging is experiencing fantastic success in the worldwide. However, during its rapi...
La recommandation des produits appropriés aux clients est cruciale dans de nombreuses plateformes de...
Topic recommendation can help users deal with the information overload issue in micro-blogging commu...
Due to their first-hand, diverse and evolution-aware reflection of nearly all areas of life, heterog...
Recommender Systems suggest items that are likely to be the most interesting for users, based on the...
Incorporating the temporal property of queries into time-aware information access methods has been s...
Topic recommendation can help users deal with the information overload issue in micro-blogging commu...
Random walks on bipartite networks have been used extensively to design personalized recommendation ...
Abstract — Nowadays, Online Social Networks have given the opportunity to users to share their inter...
The rapid development of the World Wide Web has created massive information leading to the informati...
Recently, the Internet has played a significant and substantial role in people's lives. However, the...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...