The rapid expansion of Internet brings us overwhelming online information, which is impossible for an individual to go through all of it. Therefore, recommender systems were created to help people dig through this abundance of information. In networks composed by users and objects, recommender algorithms based on diffusion have been proven to be one of the best performing methods. Previous works considered the diffusion process from user to object, and from object to user to be equivalent. We show in this work that it is not the case and we improve the quality of the recommendation by taking into account the asymmetrical nature of this process. We apply this idea to modify the state-of-the-art recommendation methods. The simulation results ...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
We study recommendation in scenarios where there's no prior information about the quality of content...
Methods used in information filtering and recommendation often rely on quantifying the similarity be...
With the rapid growth of the Internet and overwhelming amount of information and choices that people...
Recommender systems provide a promising way to address the information overload problem which is com...
The recommender system is a very promising way to address the problem of overabundant information fo...
© 2013 IEEE. In recommender systems, collaborative filtering technology is an important method to ev...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...
Recommendation systems are gaining popularity with the proliferation of the Internet of People (IoP)...
Recommender system is an effective tool to find the most relevant information for online u...
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
Recommender systems use the records of users' activities and profiles of both users and products to...
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
During the past few years, users’ membership in the online system (i.e. the social groups that onlin...
We propose two recommendation methods, based on the appropriate normalization of already existing si...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
We study recommendation in scenarios where there's no prior information about the quality of content...
Methods used in information filtering and recommendation often rely on quantifying the similarity be...
With the rapid growth of the Internet and overwhelming amount of information and choices that people...
Recommender systems provide a promising way to address the information overload problem which is com...
The recommender system is a very promising way to address the problem of overabundant information fo...
© 2013 IEEE. In recommender systems, collaborative filtering technology is an important method to ev...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...
Recommendation systems are gaining popularity with the proliferation of the Internet of People (IoP)...
Recommender system is an effective tool to find the most relevant information for online u...
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
Recommender systems use the records of users' activities and profiles of both users and products to...
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
During the past few years, users’ membership in the online system (i.e. the social groups that onlin...
We propose two recommendation methods, based on the appropriate normalization of already existing si...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
We study recommendation in scenarios where there's no prior information about the quality of content...
Methods used in information filtering and recommendation often rely on quantifying the similarity be...