This article argues for the need of personal recommender systems in lifelong learning networks that provide learners advice on suitable learning activities to follow. Existing recommender systems and recommendation techniques used for consumer products and other contexts are assessed on their suitability for providing navigation support in a learning network. Similarities and differences are translated into specific demands for learning and specific requirements for recommendation techniques. We propose a combination of memory-based recommendation techniques that appear suitable to realize personalized recommendation on learning activities in the context of e-learning. An initial model for the design of such systems in learning networks and...
Learners increasingly use the Internet as source to find suitable information for their learning nee...
This article presents ongoing work that, by means of simulations, attempts to find out the character...
One of the most ambitious use cases of computer-assisted learning is to build a recommendation syste...
This article argues for the need of personal recommender systems in lifelong learning networks that ...
Drachsler, H., Hummel, H. G. K., & Koper, R. (2008). Personal recommender systems for learners in li...
This article argues why personal recommender systems in technology-enhanced learning have to be adju...
This article presents research on personal recommender systems for lifelong learning. The personal r...
This project is about the design and development of navigation services for distributed learning net...
The following article addresses open questions of the discussions in the first SIRTEL workshop at th...
Lifelong learners who assign learning activities (from multiple sources) to attain certain learning ...
The majority of current web-based learning systems are closed learning environments where courses an...
Recommender systems for e-learning demand specific pedagogy-oriented and hybrid recommendation strat...
Recommender systems for e-learning demand specific pedagogy-oriented and hybrid recommendation strat...
The majority of current web-based learning systems are closed learning environments where courses an...
This paper offers an extended abstract of a PhD project that focuses on supporting learners in findi...
Learners increasingly use the Internet as source to find suitable information for their learning nee...
This article presents ongoing work that, by means of simulations, attempts to find out the character...
One of the most ambitious use cases of computer-assisted learning is to build a recommendation syste...
This article argues for the need of personal recommender systems in lifelong learning networks that ...
Drachsler, H., Hummel, H. G. K., & Koper, R. (2008). Personal recommender systems for learners in li...
This article argues why personal recommender systems in technology-enhanced learning have to be adju...
This article presents research on personal recommender systems for lifelong learning. The personal r...
This project is about the design and development of navigation services for distributed learning net...
The following article addresses open questions of the discussions in the first SIRTEL workshop at th...
Lifelong learners who assign learning activities (from multiple sources) to attain certain learning ...
The majority of current web-based learning systems are closed learning environments where courses an...
Recommender systems for e-learning demand specific pedagogy-oriented and hybrid recommendation strat...
Recommender systems for e-learning demand specific pedagogy-oriented and hybrid recommendation strat...
The majority of current web-based learning systems are closed learning environments where courses an...
This paper offers an extended abstract of a PhD project that focuses on supporting learners in findi...
Learners increasingly use the Internet as source to find suitable information for their learning nee...
This article presents ongoing work that, by means of simulations, attempts to find out the character...
One of the most ambitious use cases of computer-assisted learning is to build a recommendation syste...