Date
Publisher
arXiv
Large language models (LLMs) present new opportunities for creating
pedagogical agents that engage in meaningful dialogue to support student
learning. However, the current use of LLM systems like ChatGPT in classrooms
often lacks the solid theoretical foundation found in earlier intelligent
tutoring systems. To bridge this gap, we propose a framework that combines
Evidence-Centered Design with Social Cognitive Theory for adaptive scaffolding
in LLM-based agents focused on STEM+C learning. We illustrate this framework
with Inquizzitor, an LLM-based formative assessment agent that integrates
human-AI hybrid intelligence and provides feedback grounded in cognitive
science principles. Our findings show that Inquizzitor delivers high-quality
assessment and interaction aligned with core learning theories, offering
teachers effective guidance that students value. This research underscores the
potential for theory-driven LLM integration in education, highlighting the
ability of these systems to provide adaptive and principled instruction.
What is the application?
Who is the user?
Who age?
Why use AI?
