Adaptive Learning and Thinking Style to Improve E-Learning Environment Using Neural Network (ALTENN) Model

Authors

  • Hanan Ettaher Dagez
  • Ali Elghali Ambarka

DOI:

https://doi.org/10.18100/ijamec.12490

Keywords:

Adaptive e-learning style, e-learning system, thinking style

Abstract

  In recent years we have witnessed an increasingly heightened awareness of the potential benefits of adaptively in e-learning. This has been mainly driven by the realization that the ideal of individualized learning (i.e., learning tailored to the specific requirements and preferences of the individual) cannot be achieved, especially at a “massive” scale, using traditional approaches. In e-learning when the learning style of the student is not compatible with the teaching style of the teacher; difficulties in academic achievement can result. Therefore, knowing what is the preferred learning style supported by thinking style for individual can help in teaching and learning process. This paper presents an adaptive e-learning system (ALTENN) to improve e-learning environment.  Neural network technology has been used for implementing the model and extracts the appropriate learning style based on learner thinking style. The system structure and NN results are also presented in this paper.

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References

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Hanan. E. Dagez (2014), “E-learning Multi-Learning Style One Size Can Fit All”, Proceedings of the International conference on Computing Technology and Information Management, Dubai, UAE, 2014, P. 47-51.

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Hanan. E. Dagez, Mohamed. S. Baba “Applying Neural Network Technology in Qualitative Research for extracting Learning Style System to Improve E-learning Environment” published in proceeding of ITSIM’08, International Symposium on information technology, Volume 1, IEEE August 26, 2008.

Khirulddin. H, Hanan E. Dagez, “Adaptive Learning in An e-Learning Environment”, e-Learning National Seminar, organized by National University of Malaysia, Kuala Lumpur, December, 2006 – Plenary Presentation.

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Published

31-12-2015

Issue

Section

Research Articles

How to Cite

[1]
“Adaptive Learning and Thinking Style to Improve E-Learning Environment Using Neural Network (ALTENN) Model”, J. Appl. Methods Electron. Comput., vol. 3, no. 4, pp. 249–251, Dec. 2015, doi: 10.18100/ijamec.12490.

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