Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/118675
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Title: Accelerating preconditioned ADMM via degenerate proximal point mappings
Authors: Sun, D 
Yuan, Y 
Zhang, G 
Zhao, X
Issue Date: Jun-2025
Source: SIAM journal on optimization, June 2025, v. 35, no. 2, p. 1165-1193
Abstract: In this paper, we aim to accelerate a preconditioned alternating direction method of multipliers (pADMM), whose proximal terms are convex quadratic functions, for solving linearly constrained convex optimization problems. To achieve this, we first reformulate the pADMM into a form of the proximal point method (PPM) with a positive semidefinite preconditioner which can be degenerate due to the lack of strong convexity of the proximal terms in the pADMM. Then we accelerate the pADMM by accelerating the reformulated degenerate PPM (dPPM). Specifically, we first propose an accelerated dPPM by integrating the Halpern iteration and the fast Krasnosel'ski1-Mann iteration into it, achieving asymptotic o(1/k) and nonasymptotic O(1/k) convergence rates. Subsequently, building upon the accelerated dPPM, we develop an accelerated pADMM algorithm that exhibits both asymptotic o(1/k) and nonasymptotic O(1/k) nonergodic convergence rates concerning the Karush-Kuhn-Tucker residual and the primal objective function value gap. Preliminary numerical experiments validate the theoretical findings, demonstrating that the accelerated pADMM outperforms the pADMM in solving convex quadratic programming problems.
Keywords: Acceleration
Convergence rate
Degenerate PPM
Halpern iteration
Krasnosel’skiĭ–Mann iteration
Preconditioned ADMM
Publisher: Society for Industrial and Applied Mathematics
Journal: SIAM journal on optimization 
ISSN: 1052-6234
EISSN: 1095-7189
DOI: 10.1137/24M1650053
Rights: © 2025 Society for Industrial and Applied Mathematics
Copyright © by SIAM. Unauthorized reproduction of this article is prohibited.
The following publication Sun, D., Yuan, Y., Zhang, G., & Zhao, X. (2025). Accelerating preconditioned ADMM via degenerate proximal point mappings. SIAM Journal on Optimization, 35(2), 1165-1193 is available at https://doi.org/10.1137/24M1650053.
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