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Using Learning Analytics and Adaptive Formative Assessment to Support At-risk Students in Self-paced Online Learning

机译:使用学习分析和自适应形成性评估来支持有风险的学生进行自定进度的在线学习

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Online education is growing but facing a problem of high academic failure rates. In self-paced online learning (SPOL), the lack of academic support – social interaction, formative feedback, learning awareness, and academic intervention – is recognized as a critical factor causing the academic failure problem. To facilitate such academic support, this study has identified three relevant technical and pedagogical strategies (formative assessment, adaptive assessment and learning analytics) that could work together as a possible solution. Design-based research is considered for this study to investigate the effectiveness of this solution in the context of STEM disciplines of formal higher online education. A computing course is selected for a case study. The design principles of the adaptive assessment model and the intervention learning analytics model are explained. Also, the expected contributions are summarized at the end.
机译:在线教育正在增长,但是面临着高学业失败率的问题。在自定进度的在线学习(SPOL)中,缺乏学术支持(社交互动,形成性反馈,学习意识和学术干预)被认为是导致学习失败的关键因素。为了促进这种学术支持,本研究确定了三个相关的技术和教学策略(形式评估,适应性评估和学习分析),可以作为一种可能的解决方案一起使用。本研究考虑了基于设计的研究,以在正式的高等教育在线教育的STEM学科背景下研究该解决方案的有效性。选择一门计算机课程进行案例研究。解释了自适应评估模型和干预学习分析模型的设计原理。另外,最后总结了预期的贡献。

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