Journal article
The ADMM algorithm for distributed quadratic problems: Parameter selection and constraint preconditioning
A Teixeira, E Ghadimi, I Shames, H Sandberg, M Johansson
IEEE Transactions on Signal Processing | Published : 2016
Abstract
This paper presents optimal parameter selection and preconditioning of the alternating direction method of multipliers (ADMM) algorithm for a class of distributed quadratic problems, which can be formulated as equality-constrained quadratic programming problems. The parameter selection focuses on the ADMM step-size and relaxation parameter, while the preconditioning corresponds to selecting the edge weights of the underlying communication graph. We optimize these parameters to yield the smallest convergence factor of the iterates. Explicit expressions are derived for the step-size and relaxation parameter, as well as for the corresponding convergence factor. Numerical simulations justify our..
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Grants
Awarded by Swedish Research Council
Funding Acknowledgements
This work was sponsored in part by the Swedish Foundation for Strategic Research through the ICT-Psi project, the Swedish Research Council under Grants 2013-5523 and 2014-6282, and a McKenzie Fellowship.