A Simulation-Based Method for Testing Collaborative Learning Scaffolds Using LLM-Based Multi-Agent Systems
Han Wua, Lishan Zhang, Chunming Lu

TL;DR
This paper presents a simulation approach using LLM-based multi-agent systems to evaluate collaborative learning scaffolds, demonstrating improved interaction quality and alignment with learning theories.
Contribution
It introduces a novel simulation method with GPT-4o and MetaGPT to test scaffolds before real classroom application, showing promising results.
Findings
Deep Think before Speak scaffold increased discourse diversity.
The scaffold promoted more complex interaction patterns.
Simulations aligned with the ICAP learning framework.
Abstract
Background: Traditional research on collaborative learning scaffolding is often time-consuming and resource-heavy, which hinders the rapid iteration and optimization of instructional strategies. LLM-based multi-agent systems have recently emerged as a powerful tool to simulate complex social interactions and provide a novel paradigm for educational research. Objectives: This study proposes an LLM-based multi-agent simulation approach to investigate collaborative learning processes and the effectiveness of instructional scaffolds prior to actual classroom deployment. The research specifically examines the feasibility of simulating group discussions and the alignment of these simulations with established learning science theories. Methods: The simulation system was implemented using the MetaGPT framework and GPT-4o, comprising one teacher agent and five distinct student roles (Leader,…
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