Most existing collaborative filtering models only consider the use of user feedback (e. g., ratings) and meta data (e. g., content, demographics). However, in most real world recommender systems, context information, such as time and social networks, are also very important factors that could be considered in order to produce more accurate recommendations. In this work, we address several challenges for the context aware movie recommendation tasks in CAMRa 2010: (1) how to combine multiple heterogeneous forms of user feedback? (2) how to cope with dynamic user and item characteristics? (3) how to capture and utilize social connections among users? For the first challenge, we propose a novel ranking based matrix factorization model to aggreg...
The exploration of online social networks whose members share mutual recommendations and interaction...
Predicting what items will be selected by a target user in the future is an important function for r...
Predicting what items will be selected by a target user in the future is an important function for r...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Nowadays, the exponential advancement of social networks is creating new application areas for recom...
As an important factor for improving recommendations, time information has been introduced to model ...
Part 4: Complex System Modelling and SimulationInternational audienceThis paper proposes an improved...
Online social networking sites have become popular platforms on which users can link with each other...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Online social networking sites have become popular platforms on which users can link with each other...
Information retrieval (IR) systems have tremendously broaden users' access to information. However, ...
The social recommendation has attracted great attention due to its wide applications in domains such...
With the rapid proliferation of online social networks, personalized social recommendation has becom...
Thousands of new users join social media website everyday, generating huge amounts of new data. Twit...
The exploration of online social networks whose members share mutual recommendations and interaction...
Predicting what items will be selected by a target user in the future is an important function for r...
Predicting what items will be selected by a target user in the future is an important function for r...
With the rapid proliferation of online social networks, the information overload problem becomes inc...
Nowadays, the exponential advancement of social networks is creating new application areas for recom...
As an important factor for improving recommendations, time information has been introduced to model ...
Part 4: Complex System Modelling and SimulationInternational audienceThis paper proposes an improved...
Online social networking sites have become popular platforms on which users can link with each other...
In this thesis we report the results of our research on recommender systems, which addresses some of...
Recommender systems are becoming tools of choice to select the online information relevant to a give...
Online social networking sites have become popular platforms on which users can link with each other...
Information retrieval (IR) systems have tremendously broaden users' access to information. However, ...
The social recommendation has attracted great attention due to its wide applications in domains such...
With the rapid proliferation of online social networks, personalized social recommendation has becom...
Thousands of new users join social media website everyday, generating huge amounts of new data. Twit...
The exploration of online social networks whose members share mutual recommendations and interaction...
Predicting what items will be selected by a target user in the future is an important function for r...
Predicting what items will be selected by a target user in the future is an important function for r...