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The Geometry of Learning under AI Delegation

Author

Listed:
  • Lingxiao Huang

    (Nanjing University)

  • Nisheeth K. Vishnoi

    (Yale University)

Abstract

As AI systems shift from tools to collaborators, a central question is how the skills of humans relying on them change over time. We study this question mathematically by modeling the joint evolution of human skill and AI delegation as a coupled dynamical system. In our model, delegation adapts to relative performance, while skill improves through use and decays under non-use; crucially, both updates arise from optimizing a single performance metric measuring expected task error. Despite this local alignment, adaptive AI use fundamentally alters the global stability structure of human skill acquisition. Beyond the high-skill equilibrium of human-only learning, the system admits a stable low-skill equilibrium corresponding to persistent reliance, separated by a sharp basin boundary that makes early decisions effectively irreversible under the induced dynamics. We further show that AI assistance can strictly improve short-run performance while inducing persistent long-run performance loss relative to the no-AI baseline, driven by a negative feedback between delegation and practice. We characterize how AI quality deforms the basin boundary and show that these effects are robust to noise and asymmetric trust updates. Our results identify stability, not incentives or misalignment, as the central mechanism by which AI assistance can undermine long-run human performance and skill.

Suggested Citation

  • Lingxiao Huang & Nisheeth K. Vishnoi, 2026. "The Geometry of Learning under AI Delegation," Cowles Foundation Discussion Papers 2499, Cowles Foundation for Research in Economics, Yale University.
  • Handle: RePEc:cwl:cwldpp:2499
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    File URL: https://cowles.yale.edu/sites/default/files/2026-03/d2499.pdf
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    References listed on IDEAS

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