Human-AI Collaboration Reconfigures Group Regulation from Socially Shared to Hybrid Co-Regulation
Yujing Zhang, Xianghui Meng, Shihui Feng, Jionghao Lin
TLDR
GenAI in collaborative learning shifts group regulation from socially shared to hybrid co-regulation, impacting how teams manage tasks and interact.
Key contributions
- GenAI shifts group regulation from predominantly socially shared to hybrid co-regulatory forms.
- It selectively increases directive, obstacle-oriented, and affective regulatory processes.
- Participatory-focus distributions in groups remained broadly similar across conditions.
- Offers implications for the human-centered design of AI-supported collaborative learning.
Why it matters
This paper reveals how GenAI fundamentally alters group collaboration dynamics, shifting regulatory responsibility. Understanding these changes is vital for designing effective human-AI collaborative learning environments that leverage AI's potential while supporting human interaction.
Original Abstract
Generative AI (GenAI) is increasingly used in collaborative learning, yet its effects on how groups regulate collaboration remain unclear. Effective collaboration depends not only on what groups discuss, but on how they jointly manage goals, participation, strategy use, monitoring, and repair through co-regulation and socially shared regulation. We compared collaborative regulation between Human-AI and Human-Human groups in a parallel-group randomised experiment with 71 university students completing the same collaborative tasks with GenAI either available or unavailable. Focusing on human discourse, we used statistical analyses to examine differences in the distribution of collaborative regulation across regulatory modes, regulatory processes, and participatory focuses. Results showed that GenAI availability shifted regulation away from predominantly socially shared forms towards more hybrid co-regulatory forms, with selective increases in directive, obstacle-oriented, and affective regulatory processes. Participatory-focus distributions, however, were broadly similar across conditions. These findings suggest that GenAI reshapes the distribution of regulatory responsibility in collaboration and offer implications for the human-centred design of AI-supported collaborative learning.
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