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Contrasting prediction methods for early warning systems at undergraduate level

机译:本科阶段预警系统的对比预测方法

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Recent studies have provided evidence in favour of adopting early warning systems as a means of identifying at risk students. Our study examines eight prediction methods, and investigates the optimal time in a course to apply such a system. We present findings from a statistics university course which has weekly continuous assessment and a large proportion of resources on the Learning Management System Blackboard. We identify weeks 5-6 (half way through the semester) as an optimal time to implement an early warning system, as it allows time for the students to make changes to their study patterns while retaining reasonable prediction accuracy. Using detailed variables, clustering and our final prediction method of BART (Bayesian Additive Regressive Trees) we can predict students' final mark by week 6 based on mean absolute error to 6.5 percentage points. We provide our R code for implementation of the prediction methods used in a GitHub repository(1).
机译:最近的研究提供了支持采用预警系统作为识别高危学生的手段的证据。我们的研究检查了八种预测方法,并研究了应用此类系统的最佳时间。我们提供了统计大学课程的发现,该课程每周进行连续评估,并且在学习管理系统黑板上有大量资源。我们将第5-6周(整个学期的一半)确定为实施预警系统的最佳时间,因为它可以让学生有时间更改他们的学习方式,同时保持合理的预测准确性。使用详细的变量,聚类和我们的BART(贝叶斯可累加回归树)最终预测方法,我们可以在第6周的基础上根据平均绝对误差到6.5个百分点来预测学生的最终成绩。我们提供R代码以实现GitHub存储库中使用的预测方法(1)。

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