Date
Publisher
arXiv
Reproducing cognitive development, group interaction, and long-term evolution
in virtual classrooms remains a core challenge for educational AI, as real
classrooms integrate open-ended cognition, dynamic social interaction,
affective factors, and multi-session development rarely captured together.
Existing approaches mostly focus on short-term or single-agent settings,
limiting systematic study of classroom complexity and cross-task reuse. We
present EduVerse, the first user-defined multi-agent simulation space that
supports environment, agent, and session customization. A distinctive
human-in-the-loop interface further allows real users to join the space. Built
on a layered CIE (Cognition-Interaction-Evolution) architecture, EduVerse
ensures individual consistency, authentic interaction, and longitudinal
adaptation in cognition, emotion, and behavior-reproducing realistic classroom
dynamics with seamless human-agent integration. We validate EduVerse in
middle-school Chinese classes across three text genres, environments, and
multiple sessions. Results show: (1) Instructional alignment: simulated IRF
rates (0.28-0.64) closely match real classrooms (0.37-0.49), indicating
pedagogical realism; (2) Group interaction and role differentiation: network
density (0.27-0.40) with about one-third of peer links realized, while
human-agent tasks indicate a balance between individual variability and
instructional stability; (3) Cross-session evolution: the positive transition
rate R+ increase by 11.7% on average, capturing longitudinal shifts in
behavior, emotion, and cognition and revealing structured learning
trajectories. Overall, EduVerse balances realism, reproducibility, and
interpretability, providing a scalable platform for educational AI. The system
will be open-sourced to foster cross-disciplinary research.
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