SING: A Plug-and-Play DNN Learning Technique
Courtois, Adrien, Scieur, Damien, Morel, Jean-Michel, Arias, Pablo, Eboli, Thomas
–arXiv.org Artificial Intelligence
We propose SING (StabIlized and Normalized Gradient), a plug-and-play technique that improves the stability and generalization of the Adam(W) optimizer. SING is straightforward to implement and has minimal computational overhead, requiring only a layer-wise standardization of the gradients fed to Adam(W) without introducing additional hyper-parameters. We support the effectiveness and practicality of the proposed approach by showing improved results on a wide range of architectures, problems (such as image classification, depth estimation, and natural language processing), and in combination with other optimizers. We provide a theoretical analysis of the convergence of the method, and we show that by virtue of the standardization, SING can escape local minima narrower than a threshold that is inversely proportional to the network's depth.
arXiv.org Artificial Intelligence
May-25-2023
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- Research Report (0.50)
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