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A Scale Invariant Flatness Measure for Deep Network Minima

Machine Learning 2019-02-08 v1 Machine Learning

Abstract

It has been empirically observed that the flatness of minima obtained from training deep networks seems to correlate with better generalization. However, for deep networks with positively homogeneous activations, most measures of sharpness/flatness are not invariant to rescaling of the network parameters, corresponding to the same function. This means that the measure of flatness/sharpness can be made as small or as large as possible through rescaling, rendering the quantitative measures meaningless. In this paper we show that for deep networks with positively homogenous activations, these rescalings constitute equivalence relations, and that these equivalence relations induce a quotient manifold structure in the parameter space. Using this manifold structure and an appropriate metric, we propose a Hessian-based measure for flatness that is invariant to rescaling. We use this new measure to confirm the proposition that Large-Batch SGD minima are indeed sharper than Small-Batch SGD minima.

Keywords

Cite

@article{arxiv.1902.02434,
  title  = {A Scale Invariant Flatness Measure for Deep Network Minima},
  author = {Akshay Rangamani and Nam H. Nguyen and Abhishek Kumar and Dzung Phan and Sang H. Chin and Trac D. Tran},
  journal= {arXiv preprint arXiv:1902.02434},
  year   = {2019}
}
R2 v1 2026-06-23T07:34:08.178Z