Lexicographic and Depth-Sensitive Margins in Homogeneous and Non-Homogeneous Deep Models
Abstract
With an eye toward understanding complexity control in deep learning, we study how infinitesimal regularization or gradient descent optimization lead to margin maximizing solutions in both homogeneous and non homogeneous models, extending previous work that focused on infinitesimal regularization only in homogeneous models. To this end we study the limit of loss minimization with a diverging norm constraint (the “constrained path”), relate it to the limit of a “margin path” and characterize the resulting solution. For non-homogeneous ensemble models, which output is a sum of homogeneous sub-models, we show that this solution discards the shallowest sub-models if they are unnecessary. For homogeneous models, we show convergence to a “lexicographic max-margin solution”, and provide conditions under which max-margin solutions are also attained as the limit of unconstrained gradient descent.
Cite
Text
Nacson et al. "Lexicographic and Depth-Sensitive Margins in Homogeneous and Non-Homogeneous Deep Models." International Conference on Machine Learning, 2019.Markdown
[Nacson et al. "Lexicographic and Depth-Sensitive Margins in Homogeneous and Non-Homogeneous Deep Models." International Conference on Machine Learning, 2019.](https://mlanthology.org/icml/2019/nacson2019icml-lexicographic/)BibTeX
@inproceedings{nacson2019icml-lexicographic,
title = {{Lexicographic and Depth-Sensitive Margins in Homogeneous and Non-Homogeneous Deep Models}},
author = {Nacson, Mor Shpigel and Gunasekar, Suriya and Lee, Jason and Srebro, Nathan and Soudry, Daniel},
booktitle = {International Conference on Machine Learning},
year = {2019},
pages = {4683-4692},
volume = {97},
url = {https://mlanthology.org/icml/2019/nacson2019icml-lexicographic/}
}