Application of Discriminant Analysis to Predict Students’ Performances in Mathematics in Advanced Secondary Schools

Nuhu Saidi, G. S. Rao
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Abstract

This quantitative study aimed to use discriminant analysis procedures, to develop a classification model to be used for prediction, to predict students’ performances in Mathematics in advanced secondary schools in Tanzania. The study was conducted in Iringa Rural District to model students’ performances in Mathematics in advanced secondary schools owned by the government. Secondary data of students’ performances in Mathematics of 126 students when they were form five in the year 2020/2021 were collected from academic students’ progressive reports and three distinct groups each contained 42 students’ performances were formed. The analysis was done by using R programming software and a seed of 66 was used during the data partitioning to create training and test datasets. The maximum posterior probability rule was used as a classification rule to assign students’ performances in Mathematics into three proposed groups which are: High, Medium and Low. The classification accuracy achieved by the classification model to classify students’ performances in the training dataset is 97.33%. During validation, the model achieved the classification accuracy of 96.08% to classify students’ performances in the test dataset. These findings imply that, the classification model is valid and reliable. Hence the model is convenient to be used for prediction, to predict students’ performances in Mathematics in Advanced Certificate of Secondary Education Examinations.
判别分析在预测高中学生数学成绩中的应用
本定量研究旨在使用判别分析程序,开发分类模型用于预测,以预测坦桑尼亚高等中学学生的数学成绩。这项研究是在Iringa农村地区进行的,目的是模拟政府拥有的高级中学学生的数学表现。从学术学生的进步报告中收集了126名五年级学生在2020/2021年数学成绩的次要数据,并形成了三个不同的组,每个组包含42名学生的成绩。分析是通过使用R编程软件完成的,在数据分区期间使用66个种子来创建训练和测试数据集。使用最大后验概率规则作为分类规则,将学生的数学成绩分为高、中、低三组。该分类模型在训练数据集中对学生成绩进行分类的准确率为97.33%。在验证过程中,该模型对测试数据集中的学生成绩进行分类,准确率达到96.08%。这些发现表明,分类模型是有效和可靠的。因此,该模型便于预测学生在中学高级证书考试中的数学成绩。
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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