The late-stage training dynamics of (stochastic) subgradient descent on homogeneous neural networks

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Abstract

We analyze the implicit bias of constant step stochastic subgradient descent (SGD). We consider the setting of binary classification with homogeneous neural networks – a large class of deep neural networks with ReLU-type activation functions such as MLPs and CNNs without biases. We interpret the dynamics of normalized SGD iterates as an Euler-like discretization of a conservative field flow that is naturally associated to the normalized classification margin. Owing to this interpretation, we show that normalized SGD iterates converge to the set of critical points of the normalized margin at late-stage training (i.e., assuming that the data is correctly classified with positive normalized margin). Up to our knowledge, this is the first extension of the analysis of the Lyu and Li (2020) on the discrete dynamics of gradient descent to the nonsmooth and stochastic setting. Our main result applies to binary classification with exponential or logistic losses. We additionally discuss extensions to more general settings.

Original languageEnglish
JournalProceedings of Machine Learning Research
Volume291
Publication statusPublished - 1 Jan 2025
Event38th Annual Conference on Learning Theory, COLT 2025 - Lyon, France
Duration: 30 Jun 20254 Jul 2025

Keywords

  • Implicit bias
  • homogeneous neural networks
  • nonsmooth optimization
  • stochastic gradient descent

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