Traditional recommender systems provide recommendations of items to users; recently, some of them also consider the context related to predictions. In this paper we propose a technique that relies on classical recommendation algorithms and post-filters recommendations on the basis of contextual information available for them. Association rules are exploited to identify the most significant correlations among context and item characteristics. The mined rules are used to filter the predictions performed by traditional recommender systems to provide contextualized recommendations. Our experimental results show that the proposed approach allows improving the output of classical algorithms proposed in the literature, especially in the case of un...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
In the information age, the ability to analyze data has a fundamental role. In this field, recommend...
Several research works have demonstrated that if users' ratings are truly context-dependent, then Co...
Traditional recommender systems provide recommendations of items to users; recently, some of them al...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...
With the increasing use of connected devices and IoT, users' contextual information is more and more...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Unlike traditional recommender systems, which make recommendations only by using the relation betwee...
Traditionally, recommender systems for the Web deal with applications that have two dimensions, user...
Context-aware recommender systems (CARS) go beyond traditional recommender systems, that only consid...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
We consider the recommendation problem, where a set of available items or choices are rated and rec...
Recommender systems already are a consistent part in the life of most people regularly using the int...
Abstract. In contrast to traditional recommender systems, context-aware rec-ommender systems (CARS) ...
Recommender systems are systems that provide recommendations to a user based on information gathered...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
In the information age, the ability to analyze data has a fundamental role. In this field, recommend...
Several research works have demonstrated that if users' ratings are truly context-dependent, then Co...
Traditional recommender systems provide recommendations of items to users; recently, some of them al...
Unlike the traditional recommender systems, that make recommendations only by using the relation bet...
With the increasing use of connected devices and IoT, users' contextual information is more and more...
Recommender systems are important building blocks in many of today’s e-commerce applications includi...
Unlike traditional recommender systems, which make recommendations only by using the relation betwee...
Traditionally, recommender systems for the Web deal with applications that have two dimensions, user...
Context-aware recommender systems (CARS) go beyond traditional recommender systems, that only consid...
Recommender systems are software tools and techniques providing suggestions and recommendations for ...
We consider the recommendation problem, where a set of available items or choices are rated and rec...
Recommender systems already are a consistent part in the life of most people regularly using the int...
Abstract. In contrast to traditional recommender systems, context-aware rec-ommender systems (CARS) ...
Recommender systems are systems that provide recommendations to a user based on information gathered...
open7siDepending on the Internet as the main source of information regarding all aspects of our life...
In the information age, the ability to analyze data has a fundamental role. In this field, recommend...
Several research works have demonstrated that if users' ratings are truly context-dependent, then Co...