使用机器学习算法早期发现表现不佳的学生

Khalid Alalawi, R. Chiong, R. Athauda
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引用次数: 0

摘要

预测学生的表现,及早发现表现不佳的学生,是帮助那些可能难以达到课程学习成果而导致成绩不及格的学生的第一步。在这种情况下,早期发现使教育工作者能够更快地为面临挑战的学生提供适当的干预措施,从而提高成功的可能性。机器学习(ML)算法可以用来创建一个预警系统,检测需要帮助的学生,并告知教育工作者和学习者他们的表现。在本文中,我们探讨了不同ML算法的性能,用于识别在一个学期/学期的早期阶段表现不佳的学生。首先,我们试图识别可能不及格的学生,作为一个二元分类问题(及格或不及格),在学期的不同时间进行了几次实验。接下来,我们引入了另外一组处于不及格边缘的学生,这导致了一个多类分类问题。我们能够在学期早期仅使用课程的第一次评估就识别出表现不佳的学生,准确率为95%,而边缘学生的准确率为84%。此外,我们还引入了一个学生成绩预测系统,该系统允许学者创建机器学习模型,并在学期早期识别表现不佳的学生。
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Early Detection of Under-Performing Students Using Machine Learning Algorithms
Predicting student performance and identifying under-performing students early is the first step towards helping students who might have difficulties in meeting learning outcomes of a course resulting in a failing grade. Early detection in this context allows educators to provide appropriate interventions sooner for students facing challenges, which could lead to a higher possibility of success. Machine learning (ML) algorithms can be utilized to create an early warning system that detects students who need assistance and informs both educators and learners about their performance. In this paper, we explore the performance of different ML algorithms for identifying under-performing students in the early stages of an academic term/semester for a selected undergraduate course. First, we attempted to identify students who might fail their course, as a binary classification problem (pass or fail), with several experiments at different times during the semester. Next, we introduced an additional group of students who are at the borderline of failing, resulting in a multiclass classification problem. We were able to identify under-performing students early in the semester using only the first assessment in the course with an accuracy of 95%, and borderline students with an accuracy of 84%. In addition, we introduce a student performance prediction system that allows academics to create ML models and identify under-performing students early on during the academic term.
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