4.5 Article

An Adaptive Alternating Direction Method of Multipliers

Journal

JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS
Volume 195, Issue 3, Pages 1019-1055

Publisher

SPRINGER/PLENUM PUBLISHERS
DOI: 10.1007/s10957-022-02098-9

Keywords

Alternating direction method of multipliers; Douglas-Rachford algorithm; Weakly convex function; Comonotonicity; Signal denoising; Firm thresholding

Funding

  1. Simons Foundation Collaboration Grant for Mathematicians [854168]
  2. UMass Lowell faculty startup Grant
  3. Ministry of Science, Innovation and Universities of Spain
  4. European Regional Development Fund (ERDF) of the European Commission [PGC2018-097960-B-C22]
  5. Generalitat Valenciana [AICO/2021/165]
  6. Autodesk, Inc.
  7. UMass Lowell
  8. Kennedy College of Sciences, UMass Lowell

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This paper proposes and studies an adaptive version of ADMM for the case where the objective function is the sum of a strongly convex function and a weakly convex function. By combining generalized notions of convexity and penalty parameters with the convexity constants of the functions, we prove convergence of the algorithm under natural assumptions.
The alternating direction method of multipliers (ADMM) is a powerful splitting algorithm for linearly constrained convex optimization problems. In view of its popularity and applicability, a growing attention is drawn toward the ADMM in nonconvex settings. Recent studies of minimization problems for nonconvex functions include various combinations of assumptions on the objective function including, in particular, a Lipschitz gradient assumption. We consider the case where the objective is the sum of a strongly convex function and a weakly convex function. To this end, we present and study an adaptive version of the ADMM which incorporates generalized notions of convexity and penalty parameters adapted to the convexity constants of the functions. We prove convergence of the scheme under natural assumptions. To this end, we employ the recent adaptive Douglas-Rachford algorithm by revisiting the well-known duality relation between the classical ADMM and the Douglas-Rachford splitting algorithm, generalizing this connection to our setting. We illustrate our approach by relating and comparing to alternatives, and by numerical experiments on a signal denoising problem.

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