利用机器学习预测学生在虚拟学习环境中的学习成绩

Alimurtaza Merchant, Naveen Shenoy, Abhinav Bharali, M. A. Kumar
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引用次数: 0

摘要

英国开放大学(Open University,简称OU)是最大的公立研究型大学之一,其远程学习课程提供了广泛的数据。因此,开放大学学习分析数据集(OULAD)可以预测学生在在线学习项目中的学习成绩。该数据集由人口统计学特征组成,如性别、残疾、教育水平和行为特征,这些特征描述了学生在课程中的参与程度。本文使用机器学习和统计值来预测在线学习项目中学生的学习成绩。我们在特征选择和去噪后的预处理数据集上训练多类分类器。决策树、随机森林、梯度增强和KNN分类器分别在人口统计数据和虚拟学习环境(VLE)数据上进行训练。包含VLE数据后,每个分类器都显示出更高的准确性。所有分类器的准确率都在92%以上,梯度增强达到了97.5%的最高准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Students' Academic Performance in Virtual Learning Environment Using Machine Learning
The Open University (OU), one of the largest public research universities, provides a wide range of data from its distance learning courses. Hence, the Open University Learning Analytics Dataset (OULAD) allows predicting student academic performance in online learning programs. The dataset consists of demographic features such as gender, disability, education level, and behavioural features, which depict engagement levels of students in courses. This paper predicts student academic performance in online learning programs using machine learning and statistical values. We train multi-class classifiers on the preprocessed dataset after feature selection and removing noisy data. Decision Tree, Random Forest, Gradient Boosting and KNN classifiers are trained on both demographic data alone and including virtual learning environment (VLE) data with it. Each classifier shows greater accuracy with the VLE data included. All classifiers achieve accuracies above 92%, with gradient boosting achieving the maximum accuracy of 97.5%.
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