Context-aware recommender systems (CARS) generate more relevant recommendations by adapting them to the specific contextual situation of the user. This article explores how contextual information can be used to create more intelligent and useful recommender systems. It provides an overview of the multifaceted notion of context, discusses several approaches for incorporating contextual information in recommendation process, and illustrates the usage of such approaches in several application areas where different types of contexts are exploited. The article concludes by discussing the challenges and future research directions for context-aware recommender systems
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Context Aware Recommender Systems (CARS) have become an important research area since its introducti...
International audienceWith the rise in volume of data from various sources, we have an increasing ne...
Intelligent data handling techniques are beneficial for users; to store, process, analyze and access...
In this paper, we give an overview of our work to investigate the integration of context into differ...
Abstract—Recommender systems (RS) have been popular for decades and many novel types of RS have been...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
Traditional approaches to recommender systems have not taken into account situational information wh...
In the world of Big Data, a tool capable of filtering data and providing choice support is crucial. ...
Abstract. Which movies you’d like to choose in such two situations: 1). see a movie with kids and 2)...
Abstract — Recommender Systems have been/are being researched and deployed extensively in various di...
Context-aware recommender systems (CARS) emerged during re-cent years in order to adapt to users ’ p...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Recommender systems help users explore a large data set by proposing items in that data set that the...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Context Aware Recommender Systems (CARS) have become an important research area since its introducti...
International audienceWith the rise in volume of data from various sources, we have an increasing ne...
Intelligent data handling techniques are beneficial for users; to store, process, analyze and access...
In this paper, we give an overview of our work to investigate the integration of context into differ...
Abstract—Recommender systems (RS) have been popular for decades and many novel types of RS have been...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
Traditional approaches to recommender systems have not taken into account situational information wh...
In the world of Big Data, a tool capable of filtering data and providing choice support is crucial. ...
Abstract. Which movies you’d like to choose in such two situations: 1). see a movie with kids and 2)...
Abstract — Recommender Systems have been/are being researched and deployed extensively in various di...
Context-aware recommender systems (CARS) emerged during re-cent years in order to adapt to users ’ p...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Recommender systems help users explore a large data set by proposing items in that data set that the...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Recommender systems have been researched extensively by the Technology Enhanced Learning (TEL) commu...
Context Aware Recommender Systems (CARS) have become an important research area since its introducti...