RiPPLE: A Crowdsourced Adaptive Platform for Recommendation of Learning Activities
Hassan Khosravi, Kirsty Kitto, Joseph Jay Williams

TL;DR
RiPPLE is an adaptive platform that recommends personalized learning activities using crowdsourced content, integrating insights from multiple fields to improve student engagement and learning outcomes in online environments.
Contribution
The paper introduces RiPPLE, a novel platform combining crowdsourcing and adaptive learning to personalize educational activities within existing LMS frameworks.
Findings
Platform led to measurable learning gains
Students found the platform beneficial for learning
Effective integration with LMS environments
Abstract
This paper presents a platform called RiPPLE (Recommendation in Personalised Peer-Learning Environments) that recommends personalized learning activities to students based on their knowledge state from a pool of crowdsourced learning activities that are generated by educators and the students themselves. RiPPLE integrates insights from crowdsourcing, learning sciences, and adaptive learning, aiming to narrow the gap between these large bodies of research while providing a practical platform-based implementation that instructors can easily use in their courses. This paper provides a design overview of RiPPLE, which can be employed as a standalone tool or embedded into any learning management system (LMS) or online platform that supports the Learning Tools Interoperability (LTI) standard. The platform has been evaluated based on a pilot in an introductory course with 453 students at The…
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