Inference-based User’s Recommendation in E-learning Systems
DOI:
https://doi.org/10.14738/tmlai.54.3198Keywords:
E-learning, recommendation of users, artificial intelligence, Inference, Semantic Web.Abstract
This paper proposes a technique of user’s recommendation for E-learning systems, which makes it possible to identify the best qualified profiles in a given field, the method is based on artificial intelligence in order to make connection between the knowledge expressed explicitly on a learner profile and a special need of another learner, not necessarily expressed on that profile, but which can be deduced through mechanism of inference.
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