Comparative Analysis of Data Mining Methods in University Admissions

Authors

  • Fatima A. Alshaer University of Bahrain Author
  • Ahmed M. Zeki University of Bahrain Author
  • Amal Z. Al-Zayed University of Bahrain Author

DOI:

https://doi.org/10.59992/IJCI.2025.v4n7p1

Keywords:

University Admissions, Data Mining, Machine Learning

Abstract

As higher education institutions increasingly adopt data-driven approaches to improve admissions outcomes, the role of Data Mining (DM) and Machine Learning (ML) in supporting equitable, efficient, and strategic decision-making has expanded significantly. This study presents a comprehensive comparative analysis of nineteen studies that applied DM techniques to university admissions. Through a structured literature review, the research categorizes the modeling approaches into six main types: classical classification and regression models, ensemble and stacked learning models, interpretable decision tree-based systems, SVM and hybrid SVM frameworks, deep learning models, and geodemographic or behavioral modeling. The analysis synthesizes model performance, feature relevance, interpretability, and fairness considerations across these categories. Findings indicate that while ensemble and deep learning models often achieve superior predictive accuracy, interpretable models such as decision trees and logistic regression remain essential in contexts demanding transparency and stakeholder trust. Furthermore, the integration of socio-demographic and behavioral data is gaining traction as a means of enhancing inclusivity, though it raises ethical concerns regarding fairness and bias. The study concludes with strategic recommendations for institutions and researchers, emphasizing the need for hybrid modeling, contextual alignment, fairness diagnostics, and validation across diverse educational settings.

Author Biographies

  • Fatima A. Alshaer, University of Bahrain

    Lecturer in Bahrain Teachers College and PhD Researcher in Computing and Information Sciences, University of Bahrain, Kingdom of Bahrain

  • Ahmed M. Zeki, University of Bahrain

    Assistant Professor, College of Information Technology, University of Bahrain, Kingdom of Bahrain

  • Amal Z. Al-Zayed, University of Bahrain

    Assistant Professor in Bahrain Teachers College and Dean of Admission & Registration, University of Bahrain, Kingdom of Bahrain

References

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Published

2025-07-15

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Section

Articles

How to Cite

Fatima A. Alshaer, Ahmed M. Zeki, & Amal Z. Al-Zayed. (2025). Comparative Analysis of Data Mining Methods in University Admissions. International Journal of Computers and Informatics, 4(7). https://doi.org/10.59992/IJCI.2025.v4n7p1