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

IF 2.5 4区 计算机科学 Q2 COMPUTER SCIENCE, CYBERNETICS
Kybernetes Pub Date : 2024-08-06 DOI:10.1108/k-12-2023-2742
Suhanom Mohd Zaki, Saifudin Razali, Mohd Aidil Riduan Awang Kader, Mohd Zahid Laton, Maisarah Ishak, Norhapizah Mohd Burhan
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引用次数: 0

Abstract

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.

利用机器学习方法预测高等院校学生的成绩
目的许多研究都对大专预科学生的背景和学业成绩进行了调查,结果显示有些学生没有达到预期的能力水平。本研究旨在利用机器学习研究大专预科学生的人口统计特征与学业成绩之间的关系。本研究采用了二次数据分析,收集了2017年至2021年期间在马来西亚科技大学彭亨分校就读的1052名大专预科学生的信息。研究过程分为两部分:数据收集和预处理,以及构建机器学习算法、预训练和测试。研究结果性别、家庭收入、地区和全国中学考试(SPM)成绩可预测学业成绩。女生学业成功的几率是男生的 1.2 倍。中部地区学生的成绩较好,数值为 1.26。M40收入的学生更有可能取得优异成绩,几率比为2.809。SPM英语和数学成绩优秀的学生更有可能在高等教育中取得成功。社会影响这些文凭预科班学生主要来自低收入或中等收入家庭;因此,该课程可帮助他们获得更好的工作,提高生活水平。大多数文凭预备班学生在中学阶段的表现低于优秀水平,因此他们有机会继续在更高水平的学校学习。原创性/价值该预测模型有助于为文凭预备班学生进入高等教育机构的最低要求提供指导,确保资源的有效分配和所有社区平等接受高等教育。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Kybernetes
Kybernetes 工程技术-计算机:控制论
CiteScore
4.90
自引率
16.00%
发文量
237
审稿时长
4.3 months
期刊介绍: Kybernetes is the official journal of the UNESCO recognized World Organisation of Systems and Cybernetics (WOSC), and The Cybernetics Society. The journal is an important forum for the exchange of knowledge and information among all those who are interested in cybernetics and systems thinking. It is devoted to improvement in the understanding of human, social, organizational, technological and sustainable aspects of society and their interdependencies. It encourages consideration of a range of theories, methodologies and approaches, and their transdisciplinary links. The spirit of the journal comes from Norbert Wiener''s understanding of cybernetics as "The Human Use of Human Beings." Hence, Kybernetes strives for examination and analysis, based on a systemic frame of reference, of burning issues of ecosystems, society, organizations, businesses and human behavior.
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