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DoG is SGD's Best Friend: A Parameter-Free Dynamic Step Size Schedule

A tuning-free dynamic SGD step size method called Distance over Gradients (DoG) achieves performance close to SGD with a tuned learning rate and outperforms tuned SGD in a per-layer variant on vision and language transfer learning tasks.

Year
2023
Venue
arXiv 2023
Authors
3
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arxiv.org/abs/2302.12022v3ARXIV-DEFAULT
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Abstract

We propose a tuning-free dynamic SGD step size formula, which we call Distance over Gradients (DoG). The DoG step sizes depend on simple empirical quantities (distance from the initial point and norms of gradients) and have no ``learning rate'' parameter. Theoretically, we show that a slight variation of the DoG formula enjoys strong parameter-free convergence guarantees for stochastic convex optimization assuming only \emph{locally bounded} stochastic gradients. Empirically, we consider a broad range of vision and language transfer learning tasks, and show that DoG's performance is close to that of SGD with tuned learning rate. We also propose a per-layer variant of DoG that generally outperforms tuned SGD, approaching the performance of tuned Adam. A PyTorch implementation is available at https://github.com/formll/dog

Authors

3