Predicting Student Academic Performance using Machine Learning and Time Management Skill Data

Meizar Raka Rimadana, S. Kusumawardani, P. Santosa, Maximillian Sheldy Ferdinand Erwianda
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引用次数: 5

Abstract

Prediction of student academic performance is an important aspect in the learning process. This study applies several machine learning models in predicting student academic performance using Time Management Skills data obtained from Time Structure Questionnaire (TSQ). Previously, some other data has been used as a feature in making predictions, but TSQ result had never been used before as a feature, even though it may shows the conditions of how students use their time in learning. Five different machine learning models were trained using TSQ data to predict student academic performance. In addition, student English performance is also predicted in the same way as a comparison As a result, the Linear Support Vector Machine model can predict student academic performance with 80% accuracy and English performance with 84% accuracy using TSQ data.
使用机器学习和时间管理技能数据预测学生学习成绩
学生学习成绩预测是学习过程中的一个重要方面。本研究利用时间结构问卷(TSQ)的时间管理技能数据,应用几个机器学习模型来预测学生的学习成绩。以前,其他一些数据也被用作预测的特征,但TSQ结果从未被用作特征,尽管它可能显示了学生如何利用他们的学习时间的情况。使用TSQ数据训练了五种不同的机器学习模型来预测学生的学习成绩。此外,学生的英语成绩也以同样的方式进行预测,作为比较。因此,线性支持向量机模型使用TSQ数据预测学生学业成绩的准确率为80%,英语成绩的准确率为84%。
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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