用机器学习算法集合识别有风险的学生

Ranjin Soobramoney, Alveen Singh
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引用次数: 2

摘要

准确预测学生的学习成绩是高等教育机构长期可持续发展的重要过程。可靠和及时地识别有风险的学生,有助高等教育院校采取积极措施,协助这些学生。由于学生人数众多,背景各异,识别有风险的学生通常主要是一个人工过程,包括分析学生以前的学业成绩,而不是其他。虽然之前的学习成绩确实在识别有风险的学生方面起着重要作用,但可能还有其他几个可能被忽视的因素。例如,学生的人口和经济状况可以在更准确地识别有风险的学生方面发挥关键作用。在手动尝试识别有风险的学生时,考虑所有这些因素可能是不切实际的。我们提出,使用机器学习算法(mla)集合的分类模型具有很好的前景,可以通过包含几个因素来更有效地预测有风险的学生,这些因素通常甚至无法用人工方法实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying Students At-Risk with an Ensemble of Machine Learning Algorithms
Accurately predicting the academic performance of students is an important process for the long term sustainability of higher education institutions (HEIs). A reliable and timely identification of students at-risk will enable HEIs to take proactive measures to assist these students. Owing to large student numbers with varying backgrounds, identifying students at-risk is often primarily a manual process involving an analysis of students' prior academic results and little else. While prior academic results do play an important role in indentifying students at-risk, there could be several other factors that may be overlooked. The demographic and financial circumstances of the student for instance could play a key role in more accurately identifying students at-risk. It may be impractical to consider all of these factors when manually trying to identify students at-risk. We propose that classification models using an ensemble of machine learning algorithms (MLAs) have promising prospects to more effectively predict students at-risk by including several factors that may often not even be practical with manual methods.
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