Author:
Chambolle Antonin,Delplancke Claire,Ehrhardt Matthias J.,Schönlieb Carola-Bibiane,Tang Junqi
Abstract
AbstractIn this work, we propose a new primal–dual algorithm with adaptive step sizes. The stochastic primal–dual hybrid gradient (SPDHG) algorithm with constant step sizes has become widely applied in large-scale convex optimization across many scientific fields due to its scalability. While the product of the primal and dual step sizes is subject to an upper-bound in order to ensure convergence, the selection of the ratio of the step sizes is critical in applications. Up-to-now there is no systematic and successful way of selecting the primal and dual step sizes for SPDHG. In this work, we propose a general class of adaptive SPDHG (A-SPDHG) algorithms and prove their convergence under weak assumptions. We also propose concrete parameters-updating strategies which satisfy the assumptions of our theory and thereby lead to convergent algorithms. Numerical examples on computed tomography demonstrate the effectiveness of the proposed schemes.
Funder
Engineering and Physical Sciences Research Council
Leverhulme Trust
Philip Leverhulme Prize
Royal Society Wolfson Fellowship
Wellcome Trust
Horizon 2020 Framework Programme
Alan Turing Institute
Publisher
Springer Science and Business Media LLC
Cited by
1 articles.
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