一个机器学习框架来识别有不良学业成果风险的学生

Himabindu Lakkaraju, Everaldo Aguiar, Carl Shan, David I Miller, Nasir Bhanpuri, R. Ghani, Kecia L. Addison
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引用次数: 135

摘要

许多学区已经制定了成功的干预计划来帮助学生按时从高中毕业。然而,确定和优先考虑最需要这些干预措施的学生仍然具有挑战性。本文描述了一个机器学习框架来识别这样的学生,讨论了对这项任务有用的特征,应用了几种分类算法,并使用对学校管理人员重要的指标来评估它们。为了帮助测试这一框架并使其在实践中发挥作用,我们与两个美国学区合作,这两个学区共有大约20万名学生。我们一起设计了几个评估指标,从教育工作者的角度来评估机器学习算法的优点。本文关注的是有不能按时完成高中学业风险的学生,但我们的框架为未来研究其他不良学业成果奠定了坚实的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Framework to Identify Students at Risk of Adverse Academic Outcomes
Many school districts have developed successful intervention programs to help students graduate high school on time. However, identifying and prioritizing students who need those interventions the most remains challenging. This paper describes a machine learning framework to identify such students, discusses features that are useful for this task, applies several classification algorithms, and evaluates them using metrics important to school administrators. To help test this framework and make it practically useful, we partnered with two U.S. school districts with a combined enrollment of approximately 200,000 students. We together designed several evaluation metrics to assess the goodness of machine learning algorithms from an educator's perspective. This paper focuses on students at risk of not finishing high school on time, but our framework lays a strong foundation for future work on other adverse academic outcomes.
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