Implementing Machine Learning Techniques for Predicting Student Performance in an E-Learning Environment

A. Paramita, Laura Mahendratta Tjahjono
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引用次数: 2

Abstract

The pandemic of COVID-19 has altered the way people learn. Learning has moved from offline to online throughout this pandemic. Predicting student performance based on relevant data has opened up a new field for educational institutions to improve teaching and learning processes, as well as course curriculum adjustments. Machine learning technology can assist universities in forecasting student performance so that necessary changes in lecture delivery and curriculum can be made. The performance of the pupils was predicted using machine learning techniques in this research. Open University (OU) educational data is examined. Demographic, engagement, and performance metrics are used. The results of the experiment. The k-NN strategy outperformed all other algorithms on the OU dataset in some circumstances, but the ANN approach outperformed them all in others.
在电子学习环境中实现预测学生表现的机器学习技术
COVID-19大流行改变了人们的学习方式。在这次大流行期间,学习已从线下转移到线上。基于相关数据预测学生成绩,为教育机构改进教与学流程、调整课程设置开辟了新的领域。机器学习技术可以帮助大学预测学生的表现,以便对讲课方式和课程进行必要的改变。在这项研究中,使用机器学习技术预测学生的表现。开放大学(OU)的教育数据进行了检查。使用人口统计、用户粘性和性能指标。实验的结果。在某些情况下,k-NN策略在OU数据集上优于所有其他算法,但在其他情况下,ANN方法优于它们。
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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