Provable Memorization via Deep Neural Networks using Sub-linear Parameters
Machine Learning
2021-11-03 v2
Abstract
It is known that parameters are sufficient for neural networks to memorize arbitrary input-label pairs. By exploiting depth, we show that parameters suffice to memorize pairs, under a mild condition on the separation of input points. In particular, deeper networks (even with width ) are shown to memorize more pairs than shallow networks, which also agrees with the recent line of works on the benefits of depth for function approximation. We also provide empirical results that support our theoretical findings.
Cite
@article{arxiv.2010.13363,
title = {Provable Memorization via Deep Neural Networks using Sub-linear Parameters},
author = {Sejun Park and Jaeho Lee and Chulhee Yun and Jinwoo Shin},
journal= {arXiv preprint arXiv:2010.13363},
year = {2021}
}