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Early prediction models and crucial factor extraction for first-year undergraduate student dropouts

Thao-Trang Huynh-Cam (Department of Information Management, Chaoyang University of Technology, Taichung, Taiwan (R.O.C.)) (Foreign Languages and Informatics Center, Dong Thap University, Cao Lanh, Vietnam)
Long-Sheng Chen (Department of Information Management, Chaoyang University of Technology, Taichung, Taiwan (R.O.C.))
Tzu-Chuen Lu (Department of Information Management, Chaoyang University of Technology, Taichung, Taiwan (R.O.C.))

Journal of Applied Research in Higher Education

ISSN: 2050-7003

Article publication date: 19 March 2024

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Abstract

Purpose

This study aimed to use enrollment information including demographic, family background and financial status, which can be gathered before the first semester starts, to construct early prediction models (EPMs) and extract crucial factors associated with first-year student dropout probability.

Design/methodology/approach

The real-world samples comprised the enrolled records of 2,412 first-year students of a private university (UNI) in Taiwan. This work utilized decision trees (DT), multilayer perceptron (MLP) and logistic regression (LR) algorithms for constructing EPMs; under-sampling, random oversampling and synthetic minority over sampling technique (SMOTE) methods for solving data imbalance problems; accuracy, precision, recall, F1-score, receiver operator characteristic (ROC) curve and area under ROC curve (AUC) for evaluating constructed EPMs.

Findings

DT outperformed MLP and LR with accuracy (97.59%), precision (98%), recall (97%), F1_score (97%), and ROC-AUC (98%). The top-ranking factors comprised “student loan,” “dad occupations,” “mom educational level,” “department,” “mom occupations,” “admission type,” “school fee waiver” and “main sources of living.”

Practical implications

This work only used enrollment information to identify dropout students and crucial factors associated with dropout probability as soon as students enter universities. The extracted rules could be utilized to enhance student retention.

Originality/value

Although first-year student dropouts have gained non-stop attention from researchers in educational practices and theories worldwide, diverse previous studies utilized while-and/or post-semester factors, and/or questionnaires for predicting. These methods failed to offer universities early warning systems (EWS) and/or assist them in providing in-time assistance to dropouts, who face economic difficulties. This work provided universities with an EWS and extracted rules for early dropout prevention and intervention.

Keywords

Acknowledgements

This study was supported in part by National Science and Technology Council, Taiwan (Grant No. NSTC 112-2410-H-324–004), Chaoyang University of Technology, and Dong Thap University. Authors are grateful for the financial assistance.

Citation

Huynh-Cam, T.-T., Chen, L.-S. and Lu, T.-C. (2024), "Early prediction models and crucial factor extraction for first-year undergraduate student dropouts", Journal of Applied Research in Higher Education, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/JARHE-10-2023-0461

Publisher

:

Emerald Publishing Limited

Copyright © 2024, Emerald Publishing Limited

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