PSPS: Preconditioned Stochastic Polyak Step-size method for badly scaled data
Farshed Abdukhakimov
2022 Spotlight Talk
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Workshop: Order up! The Benefits of Higher-Order Optimization in Machine Learning
in
Workshop: Order up! The Benefits of Higher-Order Optimization in Machine Learning
Abstract
The family of Stochastic Gradient Methods with Polyak Step-size offers an update rule that alleviates the need of fine-tuning the learning rate of an optimizer. Recent work (Robert M Gower, Mathieu Blondel, Nidham Gazagnadou, and Fabian Pedregosa: Cutting some slack for SGD with adaptive polyak stepsizes) has been proposed to introduce a slack variable, which makes these methods applicable outside of the interpolation regime. In this paper, we combine preconditioning and slack in an updated optimization algorithm to show its performance on badly scaled and/or ill-conditioned datasets. We use Hutchinson's method to obtain an estimate of a Hessian which is used as the preconditioner.
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