LearnMate^2: Design and Evaluation of an LLM-powered Personalized and Adaptive Support System for Online Learning
Xinyu Jessica Wang, Christine P. Lee, Bilge Mutlu
TLDR
LearnMate^2 is an LLM-powered system designed to provide personalized and adaptive support for online learning, improving outcomes and user experience.
Key contributions
- Iteratively designed LearnMate^2 for personalized study plans, real-time assistance, and adaptive activities.
- Conducted a preliminary study ($n=24$) to refine the system's effectiveness and usability.
- Evaluated LearnMate^2 ($n=16$) against a state-of-the-art platform + LLM for learning support.
- Demonstrated improved learning outcomes and user experience compared to existing online learning tools.
Why it matters
This paper advances AI pedagogy by showing how LLMs can create truly personalized and adaptive online learning experiences. It offers insights into designing effective AI-driven educational tools that enhance both learning outcomes and user satisfaction. This is crucial for the future of online education.
Original Abstract
Personalization is crucial for effective learning, yet online learning, designed for widespread availability and open access, lacks personalized guidance. Recent advancements in large language models (LLMs) offer opportunities to bridge this gap. We explore how LLM-driven tools may be designed to support personalized and adaptive learning and examine how they shape user experience and learning outcomes. We iteratively designed \tool{} to support online learning by providing personalized study plans, real-time contextual assistance, and adaptive learning activities. A preliminary study ($n=24$) assessed the effectiveness and usability of \tool{} and informed refinements in our system, which we then evaluated ($n = 16$) against a combination of a state-of-the-art online learning platform and an LLM for learning support. Results indicate that \tool{} advances AI pedagogy by improving both learning outcomes and user experience compared to existing online learning and support tools. This work advances our understanding of the design space of personalized, AI-driven educational tools and their potential impact on user experience.
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