English

Human-AI Co-Evolution and Epistemic Collapse: A Dynamical Systems Perspective

Human-Computer Interaction 2026-05-08 v1 Artificial Intelligence

Abstract

Large language models (LLMs) are reshaping how knowledge is produced, with increasing reliance on AI systems for generation, summarization, and reasoning. While prior work has studied cognitive offloading in humans and model collapse in recursive training, these effects are typically considered in isolation. We propose a unified perspective: humans and language models form a coupled dynamical system linked by a feedback loop of usage, generation, and retraining. We introduce a minimal model with three variables -- human cognition, data quality, and model capability -- and show that this feedback can give rise to distinct dynamical regimes. Our analysis identifies three regimes: co-evolutionary enhancement, fragile equilibrium, and degenerative convergence. Through a simple simulation, we demonstrate that increasing reliance on AI can induce a transition toward a low-diversity, suboptimal equilibrium. From an information-theoretic perspective, this transition corresponds to an emergent information bottleneck in the human-AI loop, where entropy reduction reflects loss of diversity and support under closed-loop feedback rather than beneficial compression. These results suggest that the trajectory of AI systems is shaped not only by model design, but by the dynamics of human-AI co-evolution.

Keywords

Cite

@article{arxiv.2605.06347,
  title  = {Human-AI Co-Evolution and Epistemic Collapse: A Dynamical Systems Perspective},
  author = {Xuening Wu and Yanlan Kang and Qianya Xu and Kexuan Xie and Jiaqi Mi and Honggang Wang and Yubin Liu and Zeping Chen},
  journal= {arXiv preprint arXiv:2605.06347},
  year   = {2026}
}

Comments

5 pages, 3 figures, ICML EIML Workshop submitted

R2 v1 2026-07-01T12:55:12.888Z