Trajectory Alignment: Understanding the Edge of Stability Phenomenon via Bifurcation Theory

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Cohen et al. (2021) empirically study the evolution of the largest eigenvalue of the loss Hessian, also known as sharpness, along the gradient descent (GD) trajectory and observe a phenomenon called the Edge of Stability (EoS). The sharpness increases at the early phase of training (referred to as progressive sharpening), and eventually saturates close to the threshold of 2/(step size). In this paper, we start by demonstrating through empirical studies that when the EoS phenomenon occurs, different GD trajectories (after a proper reparameterization) align on a specific bifurcation diagram independent of initialization. We then rigorously prove this trajectory alignment phenomenon for a two-layer fully-connected linear network and a single-neuron nonlinear network trained with a single data point. Our trajectory alignment analysis establishes both progressive sharpening and EoS phenomena, encompassing and extending recent findings in the literature.
Publisher
Neural Information Processing Systems
Issue Date
2023-12-13
Language
English
Citation

37th Annual Conference on Neural Information Processing Systems

URI
http://hdl.handle.net/10203/317998
Appears in Collection
AI-Conference Papers(학술대회논문)
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