Implicit Regularization with Polynomial Growth in Deep Tensor Factorization
Machine Learning
2022-07-27 v2 Artificial Intelligence
Neural and Evolutionary Computing
Machine Learning
Abstract
We study the implicit regularization effects of deep learning in tensor factorization. While implicit regularization in deep matrix and 'shallow' tensor factorization via linear and certain type of non-linear neural networks promotes low-rank solutions with at most quadratic growth, we show that its effect in deep tensor factorization grows polynomially with the depth of the network. This provides a remarkably faithful description of the observed experimental behaviour. Using numerical experiments, we demonstrate the benefits of this implicit regularization in yielding a more accurate estimation and better convergence properties.
Cite
@article{arxiv.2207.08942,
title = {Implicit Regularization with Polynomial Growth in Deep Tensor Factorization},
author = {Kais Hariz and Hachem Kadri and Stéphane Ayache and Maher Moakher and Thierry Artières},
journal= {arXiv preprint arXiv:2207.08942},
year = {2022}
}
Comments
Accepted to ICML 2022