Personalized recommender systems are confronting great challenges of accuracy, diversification and novelty, especially when the data set is sparse and lacks accessorial information, such as user profiles, item attributes and explicit ratings. Collaborative tags contain rich information about personalized preferences and item contents, and are therefore potential to help in providing better recommendations. In this article, we propose a recommendation algorithm based on an integrated diffusion on user–item–tag tripartite graphs. We use three benchmark data sets, Del.icio.us, MovieLens and BibSonomy, to evaluate our algorithm. Experimental results demonstrate that the usage of tag information can significantly improve accuracy, diversificatio...
The existing recommendation algorithms often rely heavily on the original score information in the u...
An exponential increase in the usage of the World Wide Web (Web 2.0) has led to a wide collection of...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...
AbstractRecently, social tagging systems have been widely applied in web systems and some physical p...
In the past decade, Social Tagging Systems have attracted increasing attention from both physical an...
Effective recommendation is indispensable to customized or personalized services. Collaborative filt...
AbstractTo recommend products to users according to their interests, research on recommended systems...
Collaborative Tagging Systems such as Flickr, del.icio.us, and BibSonomy are examples of Web 2.0 app...
Recommendation techniques have proven their usefulness as a tool to cope with the information overlo...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
Personalized recommender systems have been receiving more and more attention in addressing the serio...
AbstractCurrent recommender systems are very inefficient. There are many metrics that are used to me...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
The existing recommendation algorithms often rely heavily on the original score information in the u...
An exponential increase in the usage of the World Wide Web (Web 2.0) has led to a wide collection of...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...
AbstractRecently, social tagging systems have been widely applied in web systems and some physical p...
In the past decade, Social Tagging Systems have attracted increasing attention from both physical an...
Effective recommendation is indispensable to customized or personalized services. Collaborative filt...
AbstractTo recommend products to users according to their interests, research on recommended systems...
Collaborative Tagging Systems such as Flickr, del.icio.us, and BibSonomy are examples of Web 2.0 app...
Recommendation techniques have proven their usefulness as a tool to cope with the information overlo...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
Personalized recommender systems have been receiving more and more attention in addressing the serio...
AbstractCurrent recommender systems are very inefficient. There are many metrics that are used to me...
Personalized recommender systems aim to assist users in retrieving and accessing interesting items b...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
The existing recommendation algorithms often rely heavily on the original score information in the u...
An exponential increase in the usage of the World Wide Web (Web 2.0) has led to a wide collection of...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...