Using machine learning to identify influential factors and predict student academic performance in blended learning

Hong Nguyen Thi, Long Tran Hai, Kien Do Trung
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Abstract

This study aims to identify the factors that influence academic performance and use them to develop a predictive model for student academic achievement, in order to support the improvement of education quality. In previous studies, the selection and evaluation of factors were only conducted on online learning data. In this study, we propose using a selected set of attributes from experimental data collected both in face-to-face classes and on the online learning system at Hanoi National University of Education. To build the predictive model for academic performance, we employed two variable selection methods: one is to choose highly correlated variables, and the other is to use the Stepwise linear regression analysis. Furthermore, two machine learning algorithms, linear regression, and support vector regression were used to construct the predictive model. The experimental results show that the support vector regression model with a polynomial kernel function built from the Stepwise-selected variables is the most effective.
使用机器学习识别影响因素并预测混合式学习中的学生学习成绩
本研究旨在找出影响学生学业成绩的因素,并利用这些因素建立学生学业成绩的预测模型,以支持教育质量的提升。在以往的研究中,仅对在线学习数据进行因素的选择和评价。在本研究中,我们建议使用从河内国立教育大学面对面课程和在线学习系统中收集的实验数据中选择的一组属性。为了建立学习成绩的预测模型,我们采用了两种变量选择方法:一种是选择高度相关的变量,另一种是使用逐步线性回归分析。此外,采用线性回归和支持向量回归两种机器学习算法构建预测模型。实验结果表明,由逐步选择的变量构建多项式核函数的支持向量回归模型是最有效的。
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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