Implicit Regularization via Neural Feature Alignment
Machine Learning
2021-03-18 v3 Machine Learning
Abstract
We approach the problem of implicit regularization in deep learning from a geometrical viewpoint. We highlight a regularization effect induced by a dynamical alignment of the neural tangent features introduced by Jacot et al, along a small number of task-relevant directions. This can be interpreted as a combined mechanism of feature selection and compression. By extrapolating a new analysis of Rademacher complexity bounds for linear models, we motivate and study a heuristic complexity measure that captures this phenomenon, in terms of sequences of tangent kernel classes along optimization paths.
Keywords
Cite
@article{arxiv.2008.00938,
title = {Implicit Regularization via Neural Feature Alignment},
author = {Aristide Baratin and Thomas George and César Laurent and R Devon Hjelm and Guillaume Lajoie and Pascal Vincent and Simon Lacoste-Julien},
journal= {arXiv preprint arXiv:2008.00938},
year = {2021}
}
Comments
AISTATS 2021