Abstract

Within students’ attrition studies, it is necessary to assess the longitudinal evolution of students within a given course of study, from enrolment to exit from the university through degree completion and academic dropout. Here, the student's academic progress is monitored through the number of courses failed each semester enrolled. The students’ failure rate and academic behavior typically provide significant insight into students’ exit outcomes from University programs. These programs usually have a maximum time frame required to complete the course. A likelihood-based approach is discussed that conditions on the exit outcome and random effects in adjusting within-subject correlation of longitudinal measurements. Ignoring the number of courses enrolled by a student may produce inadequate results on the actual failure rates. Conditioned on the exit outcomes of the student, we find out that factors such as financial aid, matriculation points, students’ race and course type registered, and gender are distinguishing factors that affect students’ academic performances, for completers and dropouts. Also, being in university-type accommodation (that often have added services such as transportation and internet connections) does not seem to significantly affect the failure rate within both groups of students. In addition, an increase in matriculation points significantly reduces the failure rate independent of the Quintile school of the student. Several count models such as mixed Poisson, mixed Zero Inflation Poisson, mixed Negative Binomial, and mixed Hurdle Poisson models are fitted and compared. In particular, the mixed Poisson model provides a better fit based on the Bayesian Information Criterion and residues analysis.

Highlights

  • In the Budget speech of 2018, the South African government made some commitments towards fee-free education, which has always been an issue in the country, characterized by nationwide strikes in tertiary institutions

  • More emphasis should be put in place to encourage and motivate high school pupils to perform better, as this will go a long way to better prepare them for university studies

  • Males and Engineering students should be motivated towards the benefits and opportunities of degree completion, which are a direct consequence of lower failure rates

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Summary

A Longitudinal Study

Lionel Establet Kemda1 & Michael Murray School of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, Durban, South Africa Correspondence: Lionel Establet Kemda, School of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, Durban, South Africa

Introduction
Poisson Model
Negative Binomial Model
Zero-Inflation and Hurdle Models
Model Diagnostics
Data Description
Measuring the Proportion of Clustering in the Data
Parameter Estimation of Fitted Models
Model Comparison
Findings
Conclusion

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