The MOOClet Framework: Unifying Experimentation, Dynamic Improvement, and Personalization in Online Courses

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How can educational platforms be instrumented to accelerate the use of research to improve students' experiences? We show how modular components of any educational interface-e.g. explanations, homework problems, even emails-can be implemented using the novel MOOClet software architecture. Researchers and instructors can use these augmented MOOClet components for: (1) Iterative Cycles of Randomized Experiments that test alternative versions of course content; (2) Data-Driven Improvement using adaptive experiments that rapidly use data to give better versions of content to future students, on the order of days rather than months. A MOOClet supports both manual and automated improvement using reinforcement learning; (3) Personalization by delivering alternative versions as a function of data about a student's characteristics or subgroup, using both expert-authored rules and data mining algorithms. We provide an open-source web service for implementing MOOClets (www.mooclet.org) that has been used with thousands of students. The MOOClet framework provides an ecosystem that transforms online course components into collaborative micro-laboratories, where instructors, experimental researchers, and data mining/machine learning researchers can engage in perpetual cycles of experimentation, improvement, and personalization. © 2021 ACM.
Publisher
Association for Computing Machinery, Inc
Issue Date
2021-06
Language
English
Citation

8th Annual ACM Conference on Learning at Scale, L@S 2021, pp.15 - 26

DOI
10.1145/3430895.3460128
URI
http://hdl.handle.net/10203/288791
Appears in Collection
CS-Conference Papers(학술회의논문)
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