Zero loss guarantees and explicit minimizers for generic overparametrized Deep Learning networks
Machine Learning
2025-02-21 v1 Artificial Intelligence
Analysis of PDEs
Optimization and Control
Machine Learning
Abstract
We determine sufficient conditions for overparametrized deep learning (DL) networks to guarantee the attainability of zero loss in the context of supervised learning, for the cost and {\em generic} training data. We present an explicit construction of the zero loss minimizers without invoking gradient descent. On the other hand, we point out that increase of depth can deteriorate the efficiency of cost minimization using a gradient descent algorithm by analyzing the conditions for rank loss of the training Jacobian. Our results clarify key aspects on the dichotomy between zero loss reachability in underparametrized versus overparametrized DL.
Keywords
Cite
@article{arxiv.2502.14114,
title = {Zero loss guarantees and explicit minimizers for generic overparametrized Deep Learning networks},
author = {Thomas Chen and Andrew G. Moore},
journal= {arXiv preprint arXiv:2502.14114},
year = {2025}
}
Comments
AMS Latex, 9 pages