Journal article

Bregman-Golden Ratio Algorithms for Variational Inequalities

Matthew K Tam, Daniel J Uteda

Journal of Optimization Theory and Applications | Springer | Published : 2023

Open access

Abstract

Variational inequalities provide a framework through which many optimisation problems can be solved, in particular, saddle-point problems. In this paper, we study modifications to the so-called Golden RAtio ALgorithm (GRAAL) for variational inequalities—a method which uses a fully explicit adaptive step-size and provides convergence results under local Lipschitz assumptions without requiring backtracking. We present and analyse two Bregman modifications to GRAAL: the first uses a fixed step size and converges under global Lipschitz assumptions, and the second uses an adaptive step-size rule. Numerical performance of the former method is demonstrated on a bimatrix game arising in network comm..

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University of Melbourne Researchers

Grants

Awarded by DJU and MKT are supported in part by Australian Research Council Grant DE200100063. The authors thank the anonymous referees for their valuable comments which helped to improve the manuscript.


Funding Acknowledgements

DJU and MKT are supported in part by Australian Research Council Grant DE200100063. The authors thank the anonymous referees for their valuable comments which helped to improve the manuscript.