预测衰退的ODL日志分析

K. Kalegele
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引用次数: 1

摘要

本文介绍了一项研究的初步结果,以建立学习分析在开放和远程学习(ODL)环境中的实用性。不受欢迎的是,相当数量的ODL学生需要更长的时间来完成学习,表现出可以被称为学习衰退。同时,学习机构缺乏及时的手段来预测学生的学习是否在倒退。在研究中,正在设计用于开发预测模型的潜在用途的属性。在初步阶段,学习分析的结果已经证实了一些事实,并描绘了有趣的模式。这些初步结果有望为进一步研究相关预测模型的开发提供基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of ODL Logs for Predicting Recession
This article presents preliminary results from a study to establish practicability of learning analytics in Open and Distance Learning (ODL) environment. Undesirably, a significant number of ODL students take longer to complete studies, exhibiting what can be referred to as learning recession. Meanwhile, learning institutions lack timely means to predict if a student’s learning is receding. In the study, attributes for potential use in developing prediction models are being engineered. In a preliminary stage, results of learning analytics have confirmed some facts and depicted interesting patterns. These preliminary results are expected to enable further studies on development of relevant predictive models.
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