Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning

The rapid advancements in the semantic web technologies has enabled personalised learning based on learner’s characteristics in the learning process. We have implemented a Personalised Adaptive e-Learning system (onto-PAdeL) which uses an ontological approach in design-ing learners’ models. Thus, th...

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Main Authors: Seyed Ali Hosseini, Abdel-Rahman H. Tawil, Hossein Jahankhani, Maryam Yarandi
Format: Article
Language:English
Published: Kassel University Press 2013-05-01
Series:International Journal of Emerging Technologies in Learning (iJET)
Subjects:
Online Access:http://online-journals.org/i-jet/article/view/2476
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spelling doaj-33c1a402665b4977ac6d006f9e86a0092020-11-24T22:36:20ZengKassel University PressInternational Journal of Emerging Technologies in Learning (iJET)1863-03832013-05-018241010.3991/ijet.v8i2.2476Towards an Ontological Learners’ Modelling Approach for Personalised e-LearningSeyed Ali HosseiniAbdel-Rahman H. TawilHossein JahankhaniMaryam YarandiThe rapid advancements in the semantic web technologies has enabled personalised learning based on learner’s characteristics in the learning process. We have implemented a Personalised Adaptive e-Learning system (onto-PAdeL) which uses an ontological approach in design-ing learners’ models. Thus, this paper focuses on describing our approach for modelling learners based on their charac-teristics such as abilities, learning style(s), prior knowledge and preferences. The system uses Item Response Theory (IRT) for calculating learner’s abilities. The learning style can be represented according to different theories, each of which supports personalisation in different ways. We show that using ontologies for learner modelling, in addition to many different benefits, enables reasoning for adaptive learning.http://online-journals.org/i-jet/article/view/2476e-Learningontologypersonalisationlearner model
collection DOAJ
language English
format Article
sources DOAJ
author Seyed Ali Hosseini
Abdel-Rahman H. Tawil
Hossein Jahankhani
Maryam Yarandi
spellingShingle Seyed Ali Hosseini
Abdel-Rahman H. Tawil
Hossein Jahankhani
Maryam Yarandi
Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning
International Journal of Emerging Technologies in Learning (iJET)
e-Learning
ontology
personalisation
learner model
author_facet Seyed Ali Hosseini
Abdel-Rahman H. Tawil
Hossein Jahankhani
Maryam Yarandi
author_sort Seyed Ali Hosseini
title Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning
title_short Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning
title_full Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning
title_fullStr Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning
title_full_unstemmed Towards an Ontological Learners’ Modelling Approach for Personalised e-Learning
title_sort towards an ontological learners’ modelling approach for personalised e-learning
publisher Kassel University Press
series International Journal of Emerging Technologies in Learning (iJET)
issn 1863-0383
publishDate 2013-05-01
description The rapid advancements in the semantic web technologies has enabled personalised learning based on learner’s characteristics in the learning process. We have implemented a Personalised Adaptive e-Learning system (onto-PAdeL) which uses an ontological approach in design-ing learners’ models. Thus, this paper focuses on describing our approach for modelling learners based on their charac-teristics such as abilities, learning style(s), prior knowledge and preferences. The system uses Item Response Theory (IRT) for calculating learner’s abilities. The learning style can be represented according to different theories, each of which supports personalisation in different ways. We show that using ontologies for learner modelling, in addition to many different benefits, enables reasoning for adaptive learning.
topic e-Learning
ontology
personalisation
learner model
url http://online-journals.org/i-jet/article/view/2476
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