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A Survey of Machine Learning Approaches and Techniques for Student Dropout Prediction Cover

A Survey of Machine Learning Approaches and Techniques for Student Dropout Prediction

Open Access
|Apr 2019

Abstract

School dropout is absenteeism from school for no good reason for a continuous number of days. Addressing this challenge requires a thorough understanding of the underlying issues and effective planning for interventions. Over the years machine learning has gained much attention on addressing the problem of students dropout. This is because machine learning techniques can effectively facilitate determination of at-risk students and timely planning for interventions. In order to collect, organize, and synthesize existing knowledge in the field of machine learning on addressing student dropout; literature in academic journals, books and case studies have been surveyed. The survey reveal that, several machine learning algorithms have been proposed in literature. However, most of those algorithms have been developed and tested in developed countries. Hence, developing countries are facing lack of research on the use of machine learning on addressing this problem. Furthermore, many studies focus on addressing student dropout using student level datasets. However, developing countries need to include school level datasets due to the issue of limited resources. Therefore, this paper presents an overview of machine learning in education with the focus on techniques for student dropout prediction. Furthermore, the paper highlights open challenges for future research directions.

Language: English
Submitted on: Oct 4, 2018
Accepted on: Mar 19, 2019
Published on: Apr 17, 2019
Published by: Ubiquity Press
In partnership with: Paradigm Publishing Services
Publication frequency: 1 issue per year

© 2019 Neema Mduma, Khamisi Kalegele, Dina Machuve, published by Ubiquity Press
This work is licensed under the Creative Commons Attribution 4.0 License.