Publication | Closed Access
The MOOClet Framework: Unifying Experimentation, Dynamic Improvement, and Personalization in Online Courses
14
Citations
15
References
2021
Year
Unknown Venue
EngineeringUnifying ExperimentationMooclet FrameworkEducationOnline LearningDynamic ImprovementText MiningIntelligent Tutoring SystemIntelligent Tutoring SystemsInformation RetrievalPersonalized LearningAutomated AssessmentModular ComponentsEducational Data MiningLearning AnalyticsComputer ScienceOnline Course DevelopmentBlended LearningOnline EducationAdaptive Learning
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.
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