Design and Implementation of Knowledge Base Industrial Adaptive Recommender E-Learning System Using Semantic Web
Journal: International Journal of Computer Science and Mobile Computing - IJCSMC (Vol.7, No. 5)Publication Date: 2018-05-30
Authors : Maged Elazony; Ahmed Khalifa; Sayed Nouh; Mohamed Hussein;
Page : 176-188
Keywords : E-Learning; Semantic web; adaptive learning; recommendation; knowledge Base;
Abstract
E-learning offers advantages for E-learners by making access to learning objects at any time or place ,very fast, just-in-time and relevance, However, with the rapid increase of learning objects and it is syntactically structured it will be time-consuming to find contents they really need to study, in this paper we design and implementation of knowledge-based industrial reusable, interactive web-based training and use semantic web based e-learning to deliver learning contents to learner in flexible, interactive, adaptive way. The semantic and recommendation and personalized search of Learning objects is based on comparison of the learner profile and learning objects to determine a more suitable relationship between learning objects and learner profiles. Therefore, it will advise the e-learner with most suitable learning objects using the semantic similarity.
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Last modified: 2018-09-27 21:01:37