1. Predicting Students' Success at Pre-University Studies Using Linear and Logistic Regressions.
- Author
-
Suliman, Noor Azizah, Abidin, Basir, Manan, Norhafizah Abdul, and Razal, Ahmad Mahir
- Subjects
- *
REGRESSION analysis , *COLLEGE students , *LOGISTIC regression analysis , *ACADEMIC achievement , *BIOLOGY education , *MATHEMATICS education - Abstract
The study is aimed to find the most suitable model that could predict the students' success at the medical pre-university studies, Centre for Foundation in Science, Languages and General Studies of Cyberjaya University College of Medical Sciences (CUCMS). The predictors under investigation were the national high school exit examination-Sijil Pelajaran Malaysia (SPM) achievements such as Biology, Chemistry, Physics, Additional Mathematics, Mathematics, English and Bahasa Malaysia results as well as gender and high school background factors. The outcomes showed that there is a significant difference in the final CGPA, Biology and Mathematics subjects at pre-university by gender factor, while by high school background also for Mathematics subject. In general, the correlation between the academic achievements at the high school and medical pre-university is moderately significant at a-level of 0.05, except for languages subjects. It was found also that logistic regression techniques gave better prediction models than the multiple linear regression technique for this data set. The developed logistic models were able to give the probability that is almost accurate with the real case. Hence, it could be used to identify successful students who are qualified to enter the CUCMS medical faculty before accepting any students to its foundation program. [ABSTRACT FROM AUTHOR]
- Published
- 2014
- Full Text
- View/download PDF