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Data Mining and Machine Learning Retention Models in Higher Education

Authors :
Cardona, Tatiana
Cudney, Elizabeth A.
Hoerl, Roger
Snyder, Jennifer
Source :
Journal of College Student Retention: Research, Theory & Practice. May 2023 25(1):51-75.
Publication Year :
2023

Abstract

This study presents a systematic review of the literature on the predicting student retention in higher education through machine learning algorithms based on measures such as dropout risk, attrition risk, and completion risk. A systematic review methodology was employed comprised of review protocol, requirements for study selection, and analysis of paper classification. The review aims to answer the following research questions: (1) what techniques are currently used to predict student retention rates, (2) which techniques have shown better performance under specific contexts?, (3) which factors influence the prediction of completion rates in higher education?, and (4) what are the challenges with predicting student retention? Increasing student retention in higher education is critical in order to increase graduation rates. Further, predicting student retention provides insight into opportunities for intentional student advising. The review provides a research perspective related to predicting student retention using machine learning through several key findings such as the identification of the factors utilized in past studies and methodologies used for prediction. These findings can be used to develop more comprehensive studies to further increase the prediction capability and; therefore, develop strategies to improve student retention.

Details

Language :
English
ISSN :
1521-0251 and 1541-4167
Volume :
25
Issue :
1
Database :
ERIC
Journal :
Journal of College Student Retention: Research, Theory & Practice
Publication Type :
Academic Journal
Accession number :
EJ1373552
Document Type :
Journal Articles<br />Reports - Research<br />Information Analyses
Full Text :
https://doi.org/10.1177/1521025120964920