Context-aware features have been widely recognized as important factors in recommender systems. However, as a major technique in recommender systems, traditional Collaborative Filtering (CF) does not provide a straight-forward way of integrating the context-aware information into personal recommendation. We propose a Coupled Collaborative Filtering (CCF) model to measure the contextual information and use it to improve recommendations. In the proposed approach, coupled similarity computation is designed to be calculated by interitem, intra-context and inter-context interactions among item, user and context-ware factors. Experiments based on different types of CF models demonstrate the effectiveness of our design
The traditional user-based collaborative filtering (CF) algorithms often suffer from two important p...
open access articleCollaborative Filtering Recommender Systems predict user preferences for ...
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items o...
Recommender systems can assist with decision-making by delivering a list of item recommendations tai...
Context-aware recommender systems (CARS) try to adapt their recommendations to users ’ spe-cific con...
In this thesis we report the results of our research on recommender systems, which addresses some of...
In this paper, we propose a recommender system approach which considers contextual information from ...
Abstract—In order to improve the precision of rating prediction for personalized recommendation onli...
Abstract. Context-aware recommender systems extend traditional rec-ommender systems by adapting thei...
Recommender systems have dramatically changed the way we consume content. Internet applications rely...
Abstract In recent years, collaborative filtering (CF) techniques have become one of the most popula...
© 2015 Wiley Periodicals, Inc. Collaborative filtering (CF) is the most popular approach in personal...
Abstract In this paper, we introduce a new Collaborative Filtering (CF) model which takes into consi...
Abstract. Context-aware recommender systems (CARS) take context into consideration when modeling use...
The final publication is available at Springer via https://doi.org/10.1007/978-0-387-74938-9_23Previ...
The traditional user-based collaborative filtering (CF) algorithms often suffer from two important p...
open access articleCollaborative Filtering Recommender Systems predict user preferences for ...
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items o...
Recommender systems can assist with decision-making by delivering a list of item recommendations tai...
Context-aware recommender systems (CARS) try to adapt their recommendations to users ’ spe-cific con...
In this thesis we report the results of our research on recommender systems, which addresses some of...
In this paper, we propose a recommender system approach which considers contextual information from ...
Abstract—In order to improve the precision of rating prediction for personalized recommendation onli...
Abstract. Context-aware recommender systems extend traditional rec-ommender systems by adapting thei...
Recommender systems have dramatically changed the way we consume content. Internet applications rely...
Abstract In recent years, collaborative filtering (CF) techniques have become one of the most popula...
© 2015 Wiley Periodicals, Inc. Collaborative filtering (CF) is the most popular approach in personal...
Abstract In this paper, we introduce a new Collaborative Filtering (CF) model which takes into consi...
Abstract. Context-aware recommender systems (CARS) take context into consideration when modeling use...
The final publication is available at Springer via https://doi.org/10.1007/978-0-387-74938-9_23Previ...
The traditional user-based collaborative filtering (CF) algorithms often suffer from two important p...
open access articleCollaborative Filtering Recommender Systems predict user preferences for ...
Most recommender systems use Collaborative Filtering or Content-based methods to predict new items o...