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Geometric Learning Dynamics

Abstract

We present a unified geometric framework for modeling learning dynamics in physical, biological, and machine learning systems. The theory reveals three fundamental regimes, each emerging from the power-law relationship gκag \propto \kappa^a between the metric tensor gg in the space of trainable variables and the noise covariance matrix κ\kappa. The quantum regime corresponds to a=1a = 1 and describes Schrödinger-like dynamics that emerges from a discrete shift symmetry. The efficient learning regime corresponds to a=12a = \tfrac{1}{2} and describes very fast machine learning algorithms. The equilibration regime corresponds to a=0a = 0 and describes classical models of biological evolution. We argue that the emergence of the intermediate regime a=12a = \tfrac{1}{2} is a key mechanism underlying the emergence of biological complexity.

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@article{vanchurin2025_2504.14728,
  title={ Geometric Learning Dynamics },
  author={ Vitaly Vanchurin },
  journal={arXiv preprint arXiv:2504.14728},
  year={ 2025 }
}
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