Collaborative recommendation of e-learning resources: an experimental investigation
@article{Manouselis2010CollaborativeRO, title={Collaborative recommendation of e-learning resources: an experimental investigation}, author={Nikos Manouselis and Riina Vuorikari and Frans Van Assche}, journal={J. Comp. Assisted Learning}, year={2010}, volume={26}, pages={227-242} }
Repositories with educational resources can support the formation of online learning communities by providing a platform for collaboration. [...] Key ResultsThese evaluations were then used to support the experimental investigation of design choices for an online collaborative filtering service for the portal's learning resources. A candidate multi-attribute utility collaborative filtering algorithm was appropriately parameterized and tested for this purpose. Expand Abstract
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