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Main Authors: Wu, Runxiong, Liu, Dong, Wang, Xueqin, Wang, Andi
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.00470
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author Wu, Runxiong
Liu, Dong
Wang, Xueqin
Wang, Andi
author_facet Wu, Runxiong
Liu, Dong
Wang, Xueqin
Wang, Andi
contents We consider primal-dual algorithms for general empirical risk minimization problems in distributed settings, focusing on two prominent classes of algorithms. The first class is the communication-efficient distributed dual coordinate ascent (CoCoA), derived from the coordinate ascent method for solving the dual problem. The second class is the alternating direction method of multipliers (ADMM), including consensus ADMM, proximal ADMM, and linearized ADMM. We demonstrate that both classes of algorithms can be transformed into a unified update form that involves only primal and dual variables. This discovery reveals key connections between the two classes of algorithms: CoCoA can be interpreted as a special case of proximal ADMM for solving the dual problem, while consensus ADMM is equivalent to a proximal ADMM algorithm. This discovery provides insight into how we can easily enable the ADMM variants to outperform the CoCoA variants by adjusting the augmented Lagrangian parameter. We further explore linearized versions of ADMM and analyze the effects of tuning parameters on these ADMM variants in the distributed setting. Extensive simulation studies and real-world data analysis support our theoretical findings.
format Preprint
id arxiv_https___arxiv_org_abs_2502_00470
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CoCoA Is ADMM: Unifying Two Paradigms in Distributed Optimization
Wu, Runxiong
Liu, Dong
Wang, Xueqin
Wang, Andi
Optimization and Control
Machine Learning
We consider primal-dual algorithms for general empirical risk minimization problems in distributed settings, focusing on two prominent classes of algorithms. The first class is the communication-efficient distributed dual coordinate ascent (CoCoA), derived from the coordinate ascent method for solving the dual problem. The second class is the alternating direction method of multipliers (ADMM), including consensus ADMM, proximal ADMM, and linearized ADMM. We demonstrate that both classes of algorithms can be transformed into a unified update form that involves only primal and dual variables. This discovery reveals key connections between the two classes of algorithms: CoCoA can be interpreted as a special case of proximal ADMM for solving the dual problem, while consensus ADMM is equivalent to a proximal ADMM algorithm. This discovery provides insight into how we can easily enable the ADMM variants to outperform the CoCoA variants by adjusting the augmented Lagrangian parameter. We further explore linearized versions of ADMM and analyze the effects of tuning parameters on these ADMM variants in the distributed setting. Extensive simulation studies and real-world data analysis support our theoretical findings.
title CoCoA Is ADMM: Unifying Two Paradigms in Distributed Optimization
topic Optimization and Control
Machine Learning
url https://arxiv.org/abs/2502.00470