LGOCMLMay 4, 2019

An Adaptive Remote Stochastic Gradient Method for Training Neural Networks

arXiv:1905.01422v83 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of optimizing neural network training for practitioners by offering an incremental improvement over existing adaptive methods.

The authors tackled the problem of improving convergence and generalization in neural network training by introducing the Adaptive Remote Stochastic Gradient (ARSG) method, which achieved faster convergence than ADAM and better generalization than SGD on ResNet-50 with ImageNet.

We present the remote stochastic gradient (RSG) method, which computes the gradients at configurable remote observation points, in order to improve the convergence rate and suppress gradient noise at the same time for different curvatures. RSG is further combined with adaptive methods to construct ARSG for acceleration. The method is efficient in computation and memory, and is straightforward to implement. We analyze the convergence properties by modeling the training process as a dynamic system, which provides a guideline to select the configurable observation factor without grid search. ARSG yields $O(1/\sqrt{T})$ convergence rate in non-convex settings, that can be further improved to $O(\log(T)/T)$ in strongly convex settings. Numerical experiments demonstrate that ARSG achieves both faster convergence and better generalization, compared with popular adaptive methods, such as ADAM, NADAM, AMSGRAD, and RANGER for the tested problems. In particular, for training ResNet-50 on ImageNet, ARSG outperforms ADAM in convergence speed and meanwhile it surpasses SGD in generalization.

Code Implementations1 repo
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