Predicting students’ performance at higher education institutions using a machine learning approach

Purpose: Many studies have examined pre-diploma students' backgrounds and academic performance with results showing that some did not achieve the expected level of competence. This study aims to examine the relationship between students’ demographic characteristics and their academic achievemen...

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Published in:Kybernetes
Main Author: Mohd Zaki S.; Razali S.; Awang Kader M.A.R.; Laton M.Z.; Ishak M.; Mohd Burhan N.
Format: Article
Language:English
Published: Emerald Publishing 2024
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85200331404&doi=10.1108%2fK-12-2023-2742&partnerID=40&md5=0e9e3db465fc461e3281c4cf2af44e45
id 2-s2.0-85200331404
spelling 2-s2.0-85200331404
Mohd Zaki S.; Razali S.; Awang Kader M.A.R.; Laton M.Z.; Ishak M.; Mohd Burhan N.
Predicting students’ performance at higher education institutions using a machine learning approach
2024
Kybernetes


10.1108/K-12-2023-2742
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85200331404&doi=10.1108%2fK-12-2023-2742&partnerID=40&md5=0e9e3db465fc461e3281c4cf2af44e45
Purpose: Many studies have examined pre-diploma students' backgrounds and academic performance with results showing that some did not achieve the expected level of competence. This study aims to examine the relationship between students’ demographic characteristics and their academic achievement at the pre-diploma level using machine learning. Design/methodology/approach: Secondary data analysis was used in this study, which involved collecting information about 1,052 pre-diploma students enrolled at Universiti Teknologi MARA (UiTM) Pahang Branch between 2017 and 2021. The research procedure was divided into two parts: data collecting and pre-processing, and building the machine learning algorithm, pre-training and testing. Findings: Gender, family income, region and achievement in the national secondary school examination (Sijil Pelajaran Malaysia [SPM]) predict academic performance. Female students were 1.2 times more likely to succeed academically. Central region students performed better with a value of 1.26. M40-income students were more likely to excel with an odds ratio of 2.809. Students who excelled in SPM English and Mathematics had a better likelihood of succeeding in higher education. Research limitations/implications: This research was limited to pre-diploma students from UiTM Pahang Branch. For better generalizability of the results, future research should include pre-diploma students from other UiTM branches that offer this programme. Practical implications: This study is expected to offer insights for policymakers, particularly, the Ministry of Higher Education, in developing a comprehensive policy to improve the tertiary education system by focusing on the fourth Sustainable Development Goal. Social implications: These pre-diploma students were found to originate mainly from low- or middle-income families; hence, the programme may help them acquire better jobs and improve their standard of living. Most students enrolling on the pre-diploma performed below excellent at the secondary school level and were therefore given the opportunity to continue studying at a higher level. Originality/value: This predictive model contributes to guidelines on the minimum requirements for pre-diploma students to gain admission into higher education institutions by ensuring the efficient distribution of resources and equal access to higher education among all communities. © 2024, Emerald Publishing Limited.
Emerald Publishing
0368492X
English
Article

author Mohd Zaki S.; Razali S.; Awang Kader M.A.R.; Laton M.Z.; Ishak M.; Mohd Burhan N.
spellingShingle Mohd Zaki S.; Razali S.; Awang Kader M.A.R.; Laton M.Z.; Ishak M.; Mohd Burhan N.
Predicting students’ performance at higher education institutions using a machine learning approach
author_facet Mohd Zaki S.; Razali S.; Awang Kader M.A.R.; Laton M.Z.; Ishak M.; Mohd Burhan N.
author_sort Mohd Zaki S.; Razali S.; Awang Kader M.A.R.; Laton M.Z.; Ishak M.; Mohd Burhan N.
title Predicting students’ performance at higher education institutions using a machine learning approach
title_short Predicting students’ performance at higher education institutions using a machine learning approach
title_full Predicting students’ performance at higher education institutions using a machine learning approach
title_fullStr Predicting students’ performance at higher education institutions using a machine learning approach
title_full_unstemmed Predicting students’ performance at higher education institutions using a machine learning approach
title_sort Predicting students’ performance at higher education institutions using a machine learning approach
publishDate 2024
container_title Kybernetes
container_volume
container_issue
doi_str_mv 10.1108/K-12-2023-2742
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85200331404&doi=10.1108%2fK-12-2023-2742&partnerID=40&md5=0e9e3db465fc461e3281c4cf2af44e45
description Purpose: Many studies have examined pre-diploma students' backgrounds and academic performance with results showing that some did not achieve the expected level of competence. This study aims to examine the relationship between students’ demographic characteristics and their academic achievement at the pre-diploma level using machine learning. Design/methodology/approach: Secondary data analysis was used in this study, which involved collecting information about 1,052 pre-diploma students enrolled at Universiti Teknologi MARA (UiTM) Pahang Branch between 2017 and 2021. The research procedure was divided into two parts: data collecting and pre-processing, and building the machine learning algorithm, pre-training and testing. Findings: Gender, family income, region and achievement in the national secondary school examination (Sijil Pelajaran Malaysia [SPM]) predict academic performance. Female students were 1.2 times more likely to succeed academically. Central region students performed better with a value of 1.26. M40-income students were more likely to excel with an odds ratio of 2.809. Students who excelled in SPM English and Mathematics had a better likelihood of succeeding in higher education. Research limitations/implications: This research was limited to pre-diploma students from UiTM Pahang Branch. For better generalizability of the results, future research should include pre-diploma students from other UiTM branches that offer this programme. Practical implications: This study is expected to offer insights for policymakers, particularly, the Ministry of Higher Education, in developing a comprehensive policy to improve the tertiary education system by focusing on the fourth Sustainable Development Goal. Social implications: These pre-diploma students were found to originate mainly from low- or middle-income families; hence, the programme may help them acquire better jobs and improve their standard of living. Most students enrolling on the pre-diploma performed below excellent at the secondary school level and were therefore given the opportunity to continue studying at a higher level. Originality/value: This predictive model contributes to guidelines on the minimum requirements for pre-diploma students to gain admission into higher education institutions by ensuring the efficient distribution of resources and equal access to higher education among all communities. © 2024, Emerald Publishing Limited.
publisher Emerald Publishing
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language English
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