A Flexible ADMM Algorithm for Big Data Applications
Daniel P. Robinson, Rachael E. H. Tappenden

TL;DR
This paper introduces a flexible ADMM algorithm tailored for large-scale optimization problems, featuring convergence guarantees and a parallelizable variant suitable for big data applications.
Contribution
It proposes a new F-ADMM algorithm with convergence proof and a hybrid parallelizable version, enhancing efficiency in big data optimization tasks.
Findings
F-ADMM is globally convergent under common assumptions.
The hybrid H-ADMM algorithm enables parallel data updates.
Numerical experiments show practical efficiency improvements.
Abstract
We present a flexible Alternating Direction Method of Multipliers (F-ADMM) algorithm for solving optimization problems involving a strongly convex objective function that is separable into blocks, subject to (non-separable) linear equality constraints. The F-ADMM algorithm uses a Gauss-Seidel scheme to update blocks of variables, and a regularization term is added to each of the subproblems arising within F-ADMM. We prove, under common assumptions, that F-ADMM is globally convergent. We also present a special case of F-ADMM that is partially parallelizable, which makes it attractive in a big data setting. In particular, we partition the data into groups, so that each group consists of multiple blocks of variables. By applying F-ADMM to this partitioning of the data, and using a specific regularization matrix, we obtain a hybrid ADMM (H-ADMM) algorithm: the grouped data is…
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