In the information age, the ability to analyze data has a fundamental role. In this field, recommender systems, that are able to provide suggests to users analyzing the information provided to system, play a central role. Moreover, the use of contextual information make recommender systems more reliable. This paper aims to describe a novel approach for context-aware recommender systems that exploits the tensor decomposition CANDECOMP properties in order to provide ratings forecasts. The proposed approach is tested on DePaulMovie dataset in order to evaluate its accuracy, and the numerical results are promising
Abstract. Context-aware recommender systems (CARS) adapt their recommen-dations to users ’ specific ...
Recommender systems help users overcome the information overload problem and have been widely used i...
Context-aware recommender systems (CARS) go beyond traditional recommender systems, that only consid...
In the information age, the ability to analyze data has a fundamental role. In this field, recommend...
With rapid growth of information on the internet, recommender systems become fundamental for helping...
In the world of Big Data, a tool capable of filtering data and providing choice support is crucial. ...
Context-aware processing is a research hotspot in the recommendation area, which achieves better rec...
With the increasing use of connected devices and IoT, users' contextual information is more and more...
lj.si Since the users ’ decision making depends on the situation the user is in, contextual informat...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...
Context-aware recommender systems (CARS) have been demon-strated to be able to enhance recommendatio...
Traditional approaches to recommender systems have not taken into account situational information wh...
Abstract. In contrast to traditional recommender systems, context-aware rec-ommender systems (CARS) ...
Abstract. Context-aware recommender systems (CARS) adapt their recommen-dations to users ’ specific ...
Recommender systems help users overcome the information overload problem and have been widely used i...
Context-aware recommender systems (CARS) go beyond traditional recommender systems, that only consid...
In the information age, the ability to analyze data has a fundamental role. In this field, recommend...
With rapid growth of information on the internet, recommender systems become fundamental for helping...
In the world of Big Data, a tool capable of filtering data and providing choice support is crucial. ...
Context-aware processing is a research hotspot in the recommendation area, which achieves better rec...
With the increasing use of connected devices and IoT, users' contextual information is more and more...
lj.si Since the users ’ decision making depends on the situation the user is in, contextual informat...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...
Context-aware recommender systems (CARS) have been demon-strated to be able to enhance recommendatio...
Traditional approaches to recommender systems have not taken into account situational information wh...
Abstract. In contrast to traditional recommender systems, context-aware rec-ommender systems (CARS) ...
Abstract. Context-aware recommender systems (CARS) adapt their recommen-dations to users ’ specific ...
Recommender systems help users overcome the information overload problem and have been widely used i...
Context-aware recommender systems (CARS) go beyond traditional recommender systems, that only consid...