在远程教育背景下的早期风险预警

Amal Ben Soussia, A. Roussanaly, A. Boyer
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引用次数: 0

摘要

高失败率是在线教育机构普遍存在的问题。早期预警系统(EWSs)被广泛采用作为解决这一问题的解决方案。然而,这些系统并没有超出对失败学习者的早期识别。本文提出了一种新的教育预警系统的预警算法,以尽早产生风险预警。该算法基于每周预测模型,旨在产生早期警报。对预测结果的定期跟踪可以提出正确预测的早期措施和模型的时间稳定性。这些度量为算法的最后一步做准备,即根据预定义规则生成警报。这条规则的目的是针对有风险的学习者来提高他们的学习。为此,我们使用了在线物理化学模块中注册的k-12学习者的数据。
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Toward An Early Risk Alert In A Distance Learning Context
The high failure rate is a common issue among online institutions. Early Warning Systems (EWSs) are widely adopted as a solution to deal with this issue. However, these systems do not go beyond the early identification of failing learners. In this paper, we propose a new alert algorithm of an educational EWS for generating risk alerts at the earliest. This algorithm is based on a weekly prediction model that aims to generate early alerts. The regular tracking of prediction results enabled to propose measures for the right prediction earliness and the model’s temporal stability. These measures prepare the last step of the algorithm which is the alerts generation according to a predefined rule. The objective of this rule is to target at-risk learners to improve their learning. For this aim, we used data of k-12 learners enrolled in an online physics-chemistry module.
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