使用机器学习算法分析虚拟学习环境中的大学高危学生

Deshalin Naidoo, Timothy T. Adeliyi
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引用次数: 0

摘要

在大学里面临风险的学生正在成为一个日益严重的全球性问题。这些学生很有可能退出各自的学术课程。由于对学生的重要性和影响,如果不实施干预措施,对处于危险中的学生的研究在文献中得到了广泛的关注。早期识别这些有风险的学生对于减少辍学可能性的干预至关重要。在虚拟学习环境数据集上,本研究将Adaboost与其他五种机器学习算法(包括随机森林、逻辑回归、支持向量机和决策树)进行了比较,以检测有风险的学生。本研究的重点是训练和评估所采用的六种机器学习模型,采用F1分数、混淆矩阵、召回率、精确率、ROC、错误率和准确率等性能评估指标。Adaboost被发现是表现最好的算法,具有最高的准确性,F1分数,精度和召回率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysing University at-Risk Students in a Virtual Learning Environment using Machine Learning Algorithms
Students at risk in universities are becoming a rising global issue. These are students who have a high likelihood of dropping out of their respective academic programs. Due to the importance and impact on students, if interventions are not implemented, research on students at risk is garnering widespread attention in the literature. Early identification of these at-risk students is essential for intervention to lessen the likelihood of dropout. On a virtual learning environment dataset, this study compared Adaboost with five other machine learning algorithms, including Random Forest, Logistic Regression, Support Vector Machine, and Decision Trees, to detect students at risk. This study focused on training and evaluating the six machine learning models adopted, employing performance evaluation metrics such as F1 score, Confusion Matrix, Recall, Precision, ROC, error rate, and accuracy. Adaboost was found to be the top-performing algorithm, having the highest accuracy, F1 score, Precision, and Recall.
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