Abstract

It is suggested that this study contributes by establishing a robust methodology for analyzing the longitudinal outcomes of higher education. The current research uses multinomial logistic regression. To the knowledge of the authors, this is the first logistic regression analysis performed at Saudi higher education institutions. The study can help decision-makers take action to improve the academic performance of at-risk students. The analyses are based on enrollment and completion data of 5,203 undergraduate students in the colleges of engineering and medicine. The observation period was extended for ten academic years from 2010 to 2020. Four outcomes were identified for students: (i) degree completion on time, (ii) degree completion with delay, (iii) dropout, and (iv) still enrolled in programs. The objectives are twofold: (i) to study the present situation by measuring graduation and retention rates with benchmarking, and (ii) to determine the effect of twelve continuous and dummy predictors (covariates) on outcomes. The present results show that the pre-admission covariates slightly affect performance in higher education programs. The results indicate that the most important indicator of graduation is the student's achievement in the first year of the program. Finally, it is highly suggested that initiatives be taken to increase graduation and retention rates and to review the admissions policy currently in place.

Highlights

  • Graduation and retention rates, as key performance indicators, are important tools for assessing the quality of academic programs and monitoring their performance [1].They contribute to continuous development processes and decision-making support [2]

  • Multinomial logistic regression models are implemented for 5203 students enrolled in the Colleges of Engineering and Medicine

  • The observation period is extended for ten academic years from 2010 to 2020

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Summary

INTRODUCTION

Graduation and retention rates, as key performance indicators, are important tools for assessing the quality of academic programs and monitoring their performance [1]. It is worth mentioning that, according to the university rules, a student may be considered ‘on-time graduation’ even though he/she spend longer than the minimal academic terms. There are many challenges faced by decision-makers to increase graduation and retention rates [2, 11] They should take the initiative to elevate higher education performance [2]. The present research utilizes the multinomial logistic regression similar to the previous studies [16,17,18,19] to model and analyzes the outcome events of undergraduate students of engineering and medical programs of a higher-education institution in Saudi Arabia. Correlate and analyze the effect of twelve independent variables on student retention and degree completion using multinomial logistic regression

Regression Models
Longitudinal Data
SITUATION ANALYSIS
Covariates
PREDICTION ANALYSIS
Engineering Discipline
Medical Discipline
Findings
CONCLUSION
Full Text
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