4.6 Article

On the Global and Linear Convergence of the Generalized Alternating Direction Method of Multipliers

Journal

JOURNAL OF SCIENTIFIC COMPUTING
Volume 66, Issue 3, Pages 889-916

Publisher

SPRINGER/PLENUM PUBLISHERS
DOI: 10.1007/s10915-015-0048-x

Keywords

Alternating direction method of multipliers; Global convergence; Linear convergence; Strong convexity; Distributed computingb

Funding

  1. ARL MURI [W911NF-09-1-0383]
  2. NSF [DMS-1317602]
  3. Direct For Mathematical & Physical Scien [1317602] Funding Source: National Science Foundation
  4. Division Of Mathematical Sciences [1317602] Funding Source: National Science Foundation
  5. Div Of Electrical, Commun & Cyber Sys
  6. Directorate For Engineering [1462397] Funding Source: National Science Foundation

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The formulation min(x,y) f(x) + g(y), subject to Ax + By = b, where f and g are extended-value convex functions, arises in many application areas such as signal processing, imaging and image processing, statistics, and machine learning either naturally or after variable splitting. In many common problems, one of the two objective functions is strictly convex and has Lipschitz continuous gradient. On this kind of problem, a very effective approach is the alternating direction method of multipliers (ADM or ADMM), which solves a sequence of f/g-decoupled subproblems. However, its effectiveness has not been matched by a provably fast rate of convergence; only sublinear rates such as O(1 / k) and were recently established in the literature, though the O(1 / k) rates do not require strong convexity. This paper shows that global linear convergence can be guaranteed under the assumptions of strong convexity and Lipschitz gradient on one of the two functions, along with certain rank assumptions on A and B. The result applies to various generalizations of ADM that allow the subproblems to be solved faster and less exactly in certain manners. The derived rate of convergence also provides some theoretical guidance for optimizing the ADM parameters. In addition, this paper makes meaningful extensions to the existing global convergence theory of ADM generalizations.

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