Universal Sharpness Dynamics in Neural Network Training: Fixed Point Analysis, Edge of Stability, and Route to Chaos

ORAL

Abstract

In gradient descent dynamics of neural networks, the top eigenvalue of the Hessian of the loss (sharpness) displays a variety of robust phenomena throughout training. This includes early time regimes where the sharpness may decrease during early periods of training (sharpness reduction), and later time behavior such as progressive sharpening and edge of stability. We demonstrate that a simple two-layer linear network (uv model) trained on a single training example exhibits all of the essential sharpness phenomenology observed in real-world scenarios. By analyzing the structure of dynamical fixed points in function space and the vector field of function updates, we uncover the underlying mechanisms behind these sharpness trends. Our analysis reveals (i) the mechanism behind early sharpness reduction and progressive sharpening, (ii) the required conditions for edge of stability, and (iii) a period-doubling route to chaos on the edge of stability manifold as learning rate is increased. Finally, we demonstrate that various predictions from this simplified model generalize to real-world scenarios and discuss its limitations.

* This work is supported by an NSF CAREER grant (DMR- 1753240) and the Laboratory for Physical Sciences through the Condensed Matter Theory Center.

Presenters

  • Dayal Singh Kalra

    University of Maryland, College Park

Authors

  • Dayal Singh Kalra

    University of Maryland, College Park

  • Tianyu He

    University of Maryland, College Park

  • Maissam Barkeshli

    University of Maryland, College Park