改进课程和学生成果的创新框架

Khalid Alalawi, R. Athauda, R. Chiong
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引用次数: 0

摘要

本文提出了一个新的框架,旨在提高教育成果在高等教育水平的课程。该框架集成了教育数据挖掘、学习分析和教育研究领域的概念。框架考虑课程的整个生命周期,并包括过程和支持技术工件。建立良好的教学原则,如建设性对齐(CA)和有效反馈原则被纳入框架。使用CA对学习成果、评估任务和教/学活动进行映射,除了协助课程评估外,还可以生成复习/学习计划,确定学生的进度和成绩。学生表现预测模型用于及早识别有失败风险的学生,以便进行干预。为学者提供了工具,以选择学生群体进行干预,并提供个性化的反馈。根据有效的反馈原则生成反馈报告。学习分析仪表板提供有关学生进度和课程评估的信息。基于案例研究和准实验设计在现实世界的课程框架的评估概述。这项研究和框架有可能为这一重要的研究领域做出重大贡献。
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An Innovative Framework to Improve Course and Student Outcomes
This paper presents a novel framework aimed at improving educational outcomes in tertiary-level courses. The framework integrates concepts from educational data mining, learning analytics and education research domains. The framework considers the entire life cycle of courses and includes processes and supporting technology artefacts. Well-established pedagogy principles such as Constructive Alignment (CA) and effective feedback principles are incorporated to the framework. Mapping of learning outcomes, assessment tasks and teaching/learning activities using CA enables generating revision/study plans and determining the progress and achievement of students, in addition to assisting with course evaluation. Student performance prediction models are used to identify students at risk of failure early on for interventions. Tools are provided for academics to select student groups for intervention and provide personalised feedback. Feedback reports are generated based on effective feedback principles. Learning analytics dashboards provide information on students' progress and course evaluation. An evaluation of the framework based on a case study and quasi-experimental design on real-world courses is outlined. This research and the framework have the potential to significantly contribute to this important field of study.
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