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Stochastic Gradient Methods with Layer-wise Adaptive Moments for Training of Deep Networks

27 May 2019
Boris Ginsburg
P. Castonguay
Oleksii Hrinchuk
Oleksii Kuchaiev
Vitaly Lavrukhin
Ryan Leary
Jason Chun Lok Li
Huyen Nguyen
Yang Zhang
Jonathan M. Cohen
    ODL
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Abstract

We propose NovoGrad, an adaptive stochastic gradient descent method with layer-wise gradient normalization and decoupled weight decay. In our experiments on neural networks for image classification, speech recognition, machine translation, and language modeling, it performs on par or better than well tuned SGD with momentum and Adam or AdamW. Additionally, NovoGrad (1) is robust to the choice of learning rate and weight initialization, (2) works well in a large batch setting, and (3) has two times smaller memory footprint than Adam.

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