arXiv Analytics

Sign in

arXiv:1903.02237 [cs.LG]AbstractReferencesReviewsResources

Positively Scale-Invariant Flatness of ReLU Neural Networks

Mingyang Yi, Qi Meng, Wei Chen, Zhi-ming Ma, Tie-Yan Liu

Published 2019-03-06Version 1

It was empirically confirmed by Keskar et al.\cite{SharpMinima} that flatter minima generalize better. However, for the popular ReLU network, sharp minimum can also generalize well \cite{SharpMinimacan}. The conclusion demonstrates that the existing definitions of flatness fail to account for the complex geometry of ReLU neural networks because they can't cover the Positively Scale-Invariant (PSI) property of ReLU network. In this paper, we formalize the PSI causes problem of existing definitions of flatness and propose a new description of flatness - \emph{PSI-flatness}. PSI-flatness is defined on the values of basis paths \cite{GSGD} instead of weights. Values of basis paths have been shown to be the PSI-variables and can sufficiently represent the ReLU neural networks which ensure the PSI property of PSI-flatness. Then we study the relation between PSI-flatness and generalization theoretically and empirically. First, we formulate a generalization bound based on PSI-flatness which shows generalization error decreasing with the ratio between the largest basis path value and the smallest basis path value. That is to say, the minimum with balanced values of basis paths will more likely to be flatter and generalize better. Finally. we visualize the PSI-flatness of loss surface around two learned models which indicates the minimum with smaller PSI-flatness can indeed generalize better.

Related articles: Most relevant | Search more
arXiv:1809.07122 [cs.LG] (Published 2018-09-19)
Capacity Control of ReLU Neural Networks by Basis-path Norm
arXiv:2305.15141 [cs.LG] (Published 2023-05-24)
From Tempered to Benign Overfitting in ReLU Neural Networks
arXiv:1903.07378 [cs.LG] (Published 2019-03-18)
On-line learning dynamics of ReLU neural networks using statistical physics techniques