Toward Large-scale Learning Design: Categorizing Course Designs in Service of Supporting Learning Outcomes
Autor: | Daniel T. Seaton, Claudia Hauff, Geert-Jan Houben, Dan Davis |
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Jazyk: | angličtina |
Rok vydání: | 2018 |
Předmět: |
Structure (mathematical logic)
Service (systems architecture) Parsing Higher education business.industry Computer science 05 social sciences 050301 education 02 engineering and technology computer.software_genre Task (project management) Identification (information) Categorization 020204 information systems 0202 electrical engineering electronic engineering information engineering ComputingMilieux_COMPUTERSANDEDUCATION Artificial intelligence Cluster analysis business 0503 education computer Natural language processing |
Zdroj: | L@S 2018: Proceedings of the Fifth Annual ACM Conference on Learning at Scale L@S 2018 L@S |
Popis: | 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. |
Databáze: | OpenAIRE |
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