Accelerated Forward-Backward Optimization using Deep Learning
Optimization and Control
2021-05-12 v1
Abstract
We propose several deep-learning accelerated optimization solvers with convergence guarantees. We use ideas from the analysis of accelerated forward-backward schemes like FISTA, but instead of the classical approach of proving convergence for a choice of parameters, such as a step-size, we show convergence whenever the update is chosen in a specific set. Rather than picking a point in this set using some predefined method, we train a deep neural network to pick the best update. Finally, we show that the method is applicable to several cases of smooth and non-smooth optimization and show superior results to established accelerated solvers.
Cite
@article{arxiv.2105.05210,
title = {Accelerated Forward-Backward Optimization using Deep Learning},
author = {Sebastian Banert and Jevgenija Rudzusika and Ozan Öktem and Jonas Adler},
journal= {arXiv preprint arXiv:2105.05210},
year = {2021}
}
Comments
28 pages, 4 figures