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A Proposed Ontology-Based Generic Context Model for Ubiquitous Learning

Author

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  • Benmesbah Ouissem

    (LRS Laboratory, University of Badji Mokhtar, Algeria)

  • Mahnane Lamia

    (LRS Laboratory, University of Badji Mokhtar, Algeria)

  • Mohamed Hafidi

    (LRS Laboratory, University of Badji Mokhtar, Algeria)

Abstract

Context modeling is the keystone to enable the intelligent system to adapt its functionalities properly to different situations. As such, a representation mechanism that allows an adequate manipulation of this kind of information is required, and diverse approaches have been introduced; however, what takes more value and is being positioned as a standard is the ontology-based context modeling because it presents a common understanding vocabulary for a specific domain. Hence, it might be beneficial to have a generic ontology to model context in this area. However, according to diverse works, there is no proposal of a generic context model for context-aware learning. For addressing this problem, several existing context models are studied to identify the essentials of context modeling, whereby an ontology-based generic context model is presented. The proposed ontology is evaluated in two ways. Firstly, scenarios are used to justify the feasibility of the model; then a comparative study and evaluation metrics are applied to assess the proposal.

Suggested Citation

  • Benmesbah Ouissem & Mahnane Lamia & Mohamed Hafidi, 2021. "A Proposed Ontology-Based Generic Context Model for Ubiquitous Learning," International Journal of Web-Based Learning and Teaching Technologies (IJWLTT), IGI Global, vol. 16(3), pages 47-64, May.
  • Handle: RePEc:igg:jwltt0:v:16:y:2021:i:3:p:47-64
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