Predicting academic success in higher education: literature review and best practices

Resource type
Journal Article
Authors/contributors
Title
Predicting academic success in higher education: literature review and best practices
Abstract
Student success plays a vital role in educational institutions, as it is often used as a metric for the institution’s performance. Early detection of students at risk, along with preventive measures, can drastically improve their success. Lately, machine learning techniques have been extensively used for prediction purpose. While there is a plethora of success stories in the literature, these techniques are mainly accessible to “computer science”, or more precisely, “artificial intelligence” literate educators. Indeed, the effective and efficient application of data mining methods entail many decisions, ranging from how to define student’s success, through which student attributes to focus on, up to which machine learning method is more appropriate to the given problem. This study aims to provide a step-by-step set of guidelines for educators willing to apply data mining techniques to predict student success. For this, the literature has been reviewed, and the state-of-the-art has been compiled into a systematic process, where possible decisions and parameters are comprehensively covered and explained along with arguments. This study will provide to educators an easier access to data mining techniques, enabling all the potential of their application to the field of education.
Publication
International Journal of Educational Technology in Higher Education
Volume
17
Issue
1
Pages
3
Date
2020-02-10
Journal Abbr
Int J Educ Technol High Educ
Language
en
ISSN
2365-9440
Short Title
Predicting academic success in higher education
Accessed
05/04/2022, 20:30
Library Catalogue
Springer Link
Citation
Alyahyan, E., & Düştegör, D. (2020). Predicting academic success in higher education: literature review and best practices. International Journal of Educational Technology in Higher Education, 17(1), 3. https://doi.org/10.1186/s41239-020-0177-7