Integrating machine learning practicality into learning analytics: A framework for reproducible and actionable dropout prediction models

Authors: Sabine Berger 1, Abeer Alsadoon 1, 2, Oday D. Jerew 1, 2, Ahmed Hamza Osman 3, *, Albaraa Abuobieda 4, Abubakar Elsafi 5, Azhari Qismallah 6

Affiliations:

1Higher Education Leadership Institute (HELI), Melbourne, Australia
2Asia Pacific International College (APIC), Sydney, Australia
3Department of Information Systems, Faculty of Computing and Information Technology in Rabigh, King Abdulaziz University, Jeddah, Saudi Arabia
4Department of Computer Science, University of Tabuk, Tabuk, Saudi Arabia
5College of Computer Science and Engineering, Department of Software Engineering, University of Hafr Al Batin, Hafr Al Batin, Saudi Arabia
6Department of Software Engineering, College of Computer Science and Engineering, University of Jeddah, Jeddah, Saudi Arabia

Abstract

Interest in learning analytics for predicting student dropout has increased in recent years; however, a clear gap remains between research findings and their practical implementation in educational settings. This study systematically reviews 34 recent practical studies on learning analytics and dropout prediction to identify key gaps that limit the transfer of research into practice. Based on these gaps, we propose a novel six-layer framework that integrates research design, model optimization, and deployment considerations, providing a structured approach to conducting practical learning analytics research. The framework addresses critical issues, including reproducibility, generalizability, interpretability, actionability, and computational feasibility. We map the existing literature onto this framework using structured evaluation tables and find that most studies lack comprehensive attention to model practicality. Our framework contributes to the field by integrating theoretical and operational considerations at the research stage, thereby helping to bridge the gap between published research and real-world application. Furthermore, we introduce reproduction studies as a mechanism to promote innovation, particularly in improving model interpretability, generalizability, and actionability. Finally, we recommend adopting training time as a standard evaluation metric to strengthen the focus on practical feasibility in future research.

Keywords

Learning analytics, Dropout prediction, Model practicality, Interpretability, Computational feasibility

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DOI

https://doi.org/10.21833/ijaas.2026.04.003

Citation (APA)

Berger, S., Alsadoon, A., Jerew, O. D., Osman, A. H., Abuobieda, A., Elsafi, A., & Qismallah, A. (2026). Integrating machine learning practicality into learning analytics: A framework for reproducible and actionable dropout prediction models. International Journal of Advanced and Applied Sciences, 13(4), 16–34. https://doi.org/10.21833/ijaas.2026.04.003