LGCVNEMLAug 23, 2017

Super-Convergence: Very Fast Training of Neural Networks Using Large Learning Rates

arXiv:1708.07120v3526 citationsHas Code
Originality Incremental advance
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This addresses the challenge of reducing training time for neural networks, which is crucial for researchers and practitioners in machine learning, though it is incremental as it builds on existing optimization techniques.

The paper tackles the problem of slow neural network training by introducing 'super-convergence', a phenomenon where networks can be trained an order of magnitude faster than standard methods, as demonstrated on datasets like Cifar-10/100, MNIST, and Imagenet with various architectures.

In this paper, we describe a phenomenon, which we named "super-convergence", where neural networks can be trained an order of magnitude faster than with standard training methods. The existence of super-convergence is relevant to understanding why deep networks generalize well. One of the key elements of super-convergence is training with one learning rate cycle and a large maximum learning rate. A primary insight that allows super-convergence training is that large learning rates regularize the training, hence requiring a reduction of all other forms of regularization in order to preserve an optimal regularization balance. We also derive a simplification of the Hessian Free optimization method to compute an estimate of the optimal learning rate. Experiments demonstrate super-convergence for Cifar-10/100, MNIST and Imagenet datasets, and resnet, wide-resnet, densenet, and inception architectures. In addition, we show that super-convergence provides a greater boost in performance relative to standard training when the amount of labeled training data is limited. The architectures and code to replicate the figures in this paper are available at github.com/lnsmith54/super-convergence. See http://www.fast.ai/2018/04/30/dawnbench-fastai/ for an application of super-convergence to win the DAWNBench challenge (see https://dawn.cs.stanford.edu/benchmark/).

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