AINeutralarXiv – CS AI · 9h ago6/10
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Spectral Dynamics in Deep Networks: Feature Learning, Outlier Escape, and Learning Rate Transfer
Researchers develop a dynamical mean-field theory framework to analyze how neural network weight spectra evolve during training, revealing that different parameterization schemes (μP vs NTK) produce fundamentally different outlier dynamics. The findings suggest that neural scaling laws and hyperparameter transfer depend critically on how outlier eigenvalues behave, with implications for understanding deep learning generalization and optimization.