Toward large-scale learning design: categorizing course designs in service of supporting learning outcomes

Dan Davis, Daniel T. Seaton, C. Hauff, G. Houben
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引用次数: 15

Abstract

This paper applies theory and methodology from the learning design literature to large-scale learning environments through quantitative modeling of the structure and design of Massive Open Online Courses. For two institutions of higher education, we automate the task of encoding pedagogy and learning design principles for 177 courses (which accounted for for nearly 4 million enrollments). Course materials from these MOOCs are parsed and abstracted into sequences of components, such as videos and problems. Our key contributions are (i) describing the parsing and abstraction of courses for quantitative analyses, (ii) the automated categorization of similar course designs, and (iii) the identification of key structural components that show relationships between categories and learning design principles. We employ two methods to categorize similar course designs---one aimed at clustering courses using transition probabilities and another using trajectory mining. We then proceed with an exploratory analysis of relationships between our categorization and learning outcomes.
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面向大规模学习设计:分类课程设计以支持学习成果
本文通过对大规模在线开放课程的结构和设计进行定量建模,将学习设计文献中的理论和方法应用到大规模学习环境中。对于两所高等教育机构,我们自动化了177门课程(占近400万注册人数)的教学法和学习设计原则编码任务。这些mooc的课程材料被解析和抽象成一系列的组件,比如视频和问题。我们的主要贡献是(i)描述用于定量分析的课程解析和抽象,(ii)类似课程设计的自动分类,以及(iii)识别显示类别和学习设计原则之间关系的关键结构组件。我们采用两种方法对类似的课程设计进行分类——一种旨在使用转移概率对课程进行聚类,另一种使用轨迹挖掘。然后,我们继续探索性分析我们的分类和学习成果之间的关系。
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