On non-approximability of zero loss global {mathcal L}² minimizers by gradient descent in Deep Learning
classification
💻 cs.LG
cs.AImath-phmath.MPmath.OCstat.ML
keywords
descentgradientlosszerodeeplearningminimizerstraining
read the original abstract
We analyze geometric aspects of the gradient descent algorithm in Deep Learning (DL), and give a detailed discussion of the circumstance that in underparametrized DL networks, zero loss minimization can generically not be attained. As a consequence, we conclude that the distribution of training inputs must necessarily be non-generic in order to produce zero loss minimizers, both for the method constructed in [Chen-Munoz Ewald 2023, 2024], or for gradient descent [Chen 2025] (which assume clustering of training data).
This paper has not been read by Pith yet.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.