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Published in: Journal of Scientific Computing 3/2016

29-06-2015

On the Proximal Jacobian Decomposition of ALM for Multiple-Block Separable Convex Minimization Problems and Its Relationship to ADMM

Authors: Bingsheng He, Hong-Kun Xu, Xiaoming Yuan

Published in: Journal of Scientific Computing | Issue 3/2016

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Abstract

The augmented Lagrangian method (ALM) is a benchmark for solving convex minimization problems with linear constraints. When the objective function of the model under consideration is representable as the sum of some functions without coupled variables, a Jacobian or Gauss–Seidel decomposition is often implemented to decompose the ALM subproblems so that the functions’ properties could be used more effectively in algorithmic design. The Gauss–Seidel decomposition of ALM has resulted in the very popular alternating direction method of multipliers (ADMM) for two-block separable convex minimization models and recently it was shown in He et al. (Optimization Online, 2013) that the Jacobian decomposition of ALM is not necessarily convergent. In this paper, we show that if each subproblem of the Jacobian decomposition of ALM is regularized by a proximal term and the proximal coefficient is sufficiently large, the resulting scheme to be called the proximal Jacobian decomposition of ALM, is convergent. We also show that an interesting application of the ADMM in Wang et al. (Pac J Optim, to appear), which reformulates a multiple-block separable convex minimization model as a two-block counterpart first and then applies the original ADMM directly, is closely related to the proximal Jacobian decomposition of ALM. Our analysis is conducted in the variational inequality context and is rooted in a good understanding of the proximal point algorithm.

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Metadata
Title
On the Proximal Jacobian Decomposition of ALM for Multiple-Block Separable Convex Minimization Problems and Its Relationship to ADMM
Authors
Bingsheng He
Hong-Kun Xu
Xiaoming Yuan
Publication date
29-06-2015
Publisher
Springer US
Published in
Journal of Scientific Computing / Issue 3/2016
Print ISSN: 0885-7474
Electronic ISSN: 1573-7691
DOI
https://doi.org/10.1007/s10915-015-0060-1

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