AbstractRecommenders are central in current applications to help the user find useful information spread in large amounts of data. Most Recommenders are more effective when huge amounts of user data are available in order to calculate user similarities. In general, educational applications are not popular enough in order to generate large amount of data. In this context, rule-based Recommenders are a better solution. Meta-rules can generalize a rule-set, providing bases for adaptation. The authors present a meta-rule based Recommender as an effective solution to provide a personalized recommendation to the learner, which is a new approach in rule-based Recommender Systems
A recommender system is: “a software technology that proactively suggests items of interest to users...
This chapter presents an analysis of recommender systems in TechnologyEnhanced Learning along their ...
This chapter presents an analysis of recommender systems in Technology-Enhanced Learning along their...
Recommenders are central in current applications to help the user find useful information spread in ...
Recommendation Systems are central in current applications to help the user find relevant informatio...
AbstractRecommenders are central in current applications to help the user find useful information sp...
Recommendation Systems are central in current applications to help the user find useful information ...
In a world where the number of choices can be overwhelming, recommender systems help users find and ...
Recommender systems are extremely popular as a research and application area, with various interesti...
Recommender Systems provide users with content or products they are interested in. The main purpose ...
Recommender systems provide the ability to personalize and adapt environments for student learning. ...
The task of selecting the most suitable classification algorithm for each data set under analysis is...
Recommender systems are extremely popular as a research and application area, with various interesti...
This paper presents an ongoing research about the development of a new recommender system dedicated ...
5 pagesInternational audienceThe paper presents an ongoing research about the development of a new r...
A recommender system is: “a software technology that proactively suggests items of interest to users...
This chapter presents an analysis of recommender systems in TechnologyEnhanced Learning along their ...
This chapter presents an analysis of recommender systems in Technology-Enhanced Learning along their...
Recommenders are central in current applications to help the user find useful information spread in ...
Recommendation Systems are central in current applications to help the user find relevant informatio...
AbstractRecommenders are central in current applications to help the user find useful information sp...
Recommendation Systems are central in current applications to help the user find useful information ...
In a world where the number of choices can be overwhelming, recommender systems help users find and ...
Recommender systems are extremely popular as a research and application area, with various interesti...
Recommender Systems provide users with content or products they are interested in. The main purpose ...
Recommender systems provide the ability to personalize and adapt environments for student learning. ...
The task of selecting the most suitable classification algorithm for each data set under analysis is...
Recommender systems are extremely popular as a research and application area, with various interesti...
This paper presents an ongoing research about the development of a new recommender system dedicated ...
5 pagesInternational audienceThe paper presents an ongoing research about the development of a new r...
A recommender system is: “a software technology that proactively suggests items of interest to users...
This chapter presents an analysis of recommender systems in TechnologyEnhanced Learning along their ...
This chapter presents an analysis of recommender systems in Technology-Enhanced Learning along their...