English

Implicit Regularization in Hierarchical Tensor Factorization and Deep Convolutional Neural Networks

Machine Learning 2022-09-20 v5 Artificial Intelligence Neural and Evolutionary Computing Machine Learning

Abstract

In the pursuit of explaining implicit regularization in deep learning, prominent focus was given to matrix and tensor factorizations, which correspond to simplified neural networks. It was shown that these models exhibit an implicit tendency towards low matrix and tensor ranks, respectively. Drawing closer to practical deep learning, the current paper theoretically analyzes the implicit regularization in hierarchical tensor factorization, a model equivalent to certain deep convolutional neural networks. Through a dynamical systems lens, we overcome challenges associated with hierarchy, and establish implicit regularization towards low hierarchical tensor rank. This translates to an implicit regularization towards locality for the associated convolutional networks. Inspired by our theory, we design explicit regularization discouraging locality, and demonstrate its ability to improve the performance of modern convolutional networks on non-local tasks, in defiance of conventional wisdom by which architectural changes are needed. Our work highlights the potential of enhancing neural networks via theoretical analysis of their implicit regularization.

Keywords

Cite

@article{arxiv.2201.11729,
  title  = {Implicit Regularization in Hierarchical Tensor Factorization and Deep Convolutional Neural Networks},
  author = {Noam Razin and Asaf Maman and Nadav Cohen},
  journal= {arXiv preprint arXiv:2201.11729},
  year   = {2022}
}

Comments

Accepted to ICML 2022

R2 v1 2026-06-24T09:06:03.561Z