Regularized Gradient Clipping Provably Trains Wide and Deep Neural Networks

Abstract

We present and analyze a novel regularized form of the gradient clipping algorithm, proving that it converges to global minima of the loss surface of deep neural networks under the squared loss, provided that the layers are of sufficient width. The algorithm presented here, dubbed $\delta-$GClip, introduces a modification to gradient clipping that leads to a first-of-its-kind example of a step size scheduling for gradient descent that provably minimizes training losses of deep neural nets. We also present empirical evidence that our theoretically founded $\delta-$GClip algorithm is competitive with the state-of-the-art deep learning heuristics on various neural architectures including modern transformer based architectures. The modification we do to standard gradient clipping is designed to leverage the PL* condition, a variant of the Polyak-Łojasiewicz inequality which was recently proven to be true for sufficiently wide neural networks at any depth within a neighbourhood of the initialization.

Cite

Text

Tucat et al. "Regularized Gradient Clipping Provably Trains Wide and Deep Neural Networks." Transactions on Machine Learning Research, 2025.

Markdown

[Tucat et al. "Regularized Gradient Clipping Provably Trains Wide and Deep Neural Networks." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/tucat2025tmlr-regularized/)

BibTeX

@article{tucat2025tmlr-regularized,
  title     = {{Regularized Gradient Clipping Provably Trains Wide and Deep Neural Networks}},
  author    = {Tucat, Matteo and Mukherjee, Anirbit and Sun, Mingfei and Sen, Procheta and Rivasplata, Omar},
  journal   = {Transactions on Machine Learning Research},
  year      = {2025},
  url       = {https://mlanthology.org/tmlr/2025/tucat2025tmlr-regularized/}
}