Critical Point-Finding Methods Reveal Gradient-Flat Regions of Deep Network Losses

Author:

Frye Charles G.1,Simon James2,Wadia Neha S.3,Ligeralde Andrew4,DeWeese Michael R.5,Bouchard Kristofer E.6

Affiliation:

1. Redwood Center for Theoretical Neuroscience and Helen Wills Neuroscience Institute, University of California, Berkeley, CA 94720, U.S.A. cfrye59@gmail.com

2. Redwood Center for Theoretical Neuroscience and Department of Physics, University of California, Berkeley, CA 94720, U.S.A. james.simon@berkeley.edu

3. Redwood Center for Theoretical Neuroscience and Biophysics Graduate Group, University of California, Berkeley, CA 94720, U.S.A. neha.wadia@berkeley.edu

4. Redwood Center for Theoretical Neuroscience and Biophysics Graduate Group, University of California, Berkeley, CA 94720, U.S.A. ligeralde@berkeley.edu

5. Redwood Center for Theoretical Neuroscience, Helen Wills Neuroscience Institute, Department of Physics, and Biophysics Graduate Group, University of California, Berkeley, CA 94720, U.S.A. deweese@berkeley.edu

6. Redwood Center for Theoretical Neuroscience and Helen Wills Neuroscience Institute, University of California, Berkeley, CA 94720, USA; and Biological Systems and Engineering Division and Computational Research Division, Lawrence Berkeley National Lab, Berkeley, CA 94720, U.S.A. kebouchard@lbl.gov

Abstract

Despite the fact that the loss functions of deep neural networks are highly nonconvex, gradient-based optimization algorithms converge to approximately the same performance from many random initial points. One thread of work has focused on explaining this phenomenon by numerically characterizing the local curvature near critical points of the loss function, where the gradients are near zero. Such studies have reported that neural network losses enjoy a no-bad-local-minima property, in disagreement with more recent theoretical results. We report here that the methods used to find these putative critical points suffer from a bad local minima problem of their own: they often converge to or pass through regions where the gradient norm has a stationary point. We call these gradient-flat regions, since they arise when the gradient is approximately in the kernel of the Hessian, such that the loss is locally approximately linear, or flat, in the direction of the gradient. We describe how the presence of these regions necessitates care in both interpreting past results that claimed to find critical points of neural network losses and in designing second-order methods for optimizing neural networks.

Publisher

MIT Press - Journals

Subject

Cognitive Neuroscience,Arts and Humanities (miscellaneous)

Cited by 1 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Newton-MR: Inexact Newton Method with minimum residual sub-problem solver;EURO Journal on Computational Optimization;2022

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