Error bounds, quadratic growth, and linear convergence of proximal methods
Year of publication: |
August 2018
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Authors: | Drusvyatskiy, Dmitriy ; Lewis, Adrian S. |
Published in: |
Mathematics of operations research. - Catonsville, MD : INFORMS, ISSN 0364-765X, ZDB-ID 195683-8. - Vol. 43.2018, 3, p. 919-948
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Subject: | proximal algorithm | error bound | quadratic growth | linear convergence | subregularity | subdifferential | tilt-stability | Wirtschaftliche Konvergenz | Economic convergence | Mathematische Optimierung | Mathematical programming | Schätztheorie | Estimation theory |
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