How Does Gradient Descent Learn Features -- A Local Analysis for Regularized Two-Layer Neural Networks
Abstract
The ability of learning useful features is one of the major advantages of neural networks. Although recent works show that neural network can operate in a neural tangent kernel (NTK) regime that does not allow feature learning, many works also demonstrate the potential for neural networks to go beyond NTK regime and perform feature learning. Recently, a line of work highlighted the feature learning capabilities of the early stages of gradient-based training. In this paper we consider another mechanism for feature learning via gradient descent through a local convergence analysis. We show that once the loss is below a certain threshold, gradient descent with a carefully regularized objective will capture ground-truth directions. We further strengthen this local convergence analysis by incorporating early-stage feature learning analysis. Our results demonstrate that feature learning not only happens at the initial gradient steps, but can also occur towards the end of training.
Cite
@article{arxiv.2406.01766,
title = {How Does Gradient Descent Learn Features -- A Local Analysis for Regularized Two-Layer Neural Networks},
author = {Mo Zhou and Rong Ge},
journal= {arXiv preprint arXiv:2406.01766},
year = {2024}
}
Comments
NeurIPS 2024 camera ready version