Research Article

IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES

Volume: 26 Number: 2 April 1, 2025
Jamal Eddine Rafiq *, Abdelali Zakrani , Mohammed Amraouy , Said Nouh , Abdellah Bennane
EN

IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES

Abstract

The emergence of online learning has sparked increased interest in predicting learners’ academic performance to enhance teaching effectiveness and personalized learning. In this context, we propose a complex model APPMLT-CBT which aimes to predict learners’ performance in online learning settings. This systemic model integrates cognitive, social, emotional, contextual, and normative aspects to predict the learners’ performance in online learning environment. This model, based on Competency-Based Learning Traces, takes a holistic approach by integrating various data reflecting knowledge acquisition and skills development. By Taking into account the exchanges among the learners, as well as the interactions with their teachers and the complexity of their online learning environment, the model aims to provide accurate and informed predictions of academic performance. This study provides a detailed overview of the APPMLT-CBT model, its data collection methodology, and discusses its potential implications for online teaching. Results suggest that the model can serve as a robust framework for improving online teaching and learning while offering a deep understanding of the underlying mechanisms of online learning.

Keywords

Learner’s intelligences, predicting academic performance, competency-based learning, deep learning, online learning

References

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APA
Rafiq, J. E., Zakrani, A., Amraouy, M., Nouh, S., & Bennane, A. (2025). IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES. Turkish Online Journal of Distance Education, 26(2), 39-52. https://doi.org/10.17718/tojde.1477677
AMA
1.Rafiq JE, Zakrani A, Amraouy M, Nouh S, Bennane A. IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES. TOJDE. 2025;26(2):39-52. doi:10.17718/tojde.1477677
Chicago
Rafiq, Jamal Eddine, Abdelali Zakrani, Mohammed Amraouy, Said Nouh, and Abdellah Bennane. 2025. “IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES”. Turkish Online Journal of Distance Education 26 (2): 39-52. https://doi.org/10.17718/tojde.1477677.
EndNote
Rafiq JE, Zakrani A, Amraouy M, Nouh S, Bennane A (April 1, 2025) IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES. Turkish Online Journal of Distance Education 26 2 39–52.
IEEE
[1]J. E. Rafiq, A. Zakrani, M. Amraouy, S. Nouh, and A. Bennane, “IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES”, TOJDE, vol. 26, no. 2, pp. 39–52, Apr. 2025, doi: 10.17718/tojde.1477677.
ISNAD
Rafiq, Jamal Eddine - Zakrani, Abdelali - Amraouy, Mohammed - Nouh, Said - Bennane, Abdellah. “IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES”. Turkish Online Journal of Distance Education 26/2 (April 1, 2025): 39-52. https://doi.org/10.17718/tojde.1477677.
JAMA
1.Rafiq JE, Zakrani A, Amraouy M, Nouh S, Bennane A. IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES. TOJDE. 2025;26:39–52.
MLA
Rafiq, Jamal Eddine, et al. “IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES”. Turkish Online Journal of Distance Education, vol. 26, no. 2, Apr. 2025, pp. 39-52, doi:10.17718/tojde.1477677.
Vancouver
1.Jamal Eddine Rafiq, Abdelali Zakrani, Mohammed Amraouy, Said Nouh, Abdellah Bennane. IMPROVING ONLINE LEARNING USING DEEP LEARNING AND STUDENT’S INTELLIGENCES. TOJDE. 2025 Apr. 1;26(2):39-52. doi:10.17718/tojde.1477677