OCAIAug 10, 2023

Learning (With) Distributed Optimization

arXiv:2308.05548v12 citationsh-index: 7
Originality Synthesis-oriented
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It is an incremental overview for researchers in optimization, tracing developments from early methods to recent advances like ALADIN.

This paper provides an overview of the historical progression of distributed optimization techniques, highlighting the emergence of the ALADIN algorithm which offers convergence guarantees for non-convex scenarios without auxiliary variables.

This paper provides an overview of the historical progression of distributed optimization techniques, tracing their development from early duality-based methods pioneered by Dantzig, Wolfe, and Benders in the 1960s to the emergence of the Augmented Lagrangian Alternating Direction Inexact Newton (ALADIN) algorithm. The initial focus on Lagrangian relaxation for convex problems and decomposition strategies led to the refinement of methods like the Alternating Direction Method of Multipliers (ADMM). The resurgence of interest in distributed optimization in the late 2000s, particularly in machine learning and imaging, demonstrated ADMM's practical efficacy and its unifying potential. This overview also highlights the emergence of the proximal center method and its applications in diverse domains. Furthermore, the paper underscores the distinctive features of ALADIN, which offers convergence guarantees for non-convex scenarios without introducing auxiliary variables, differentiating it from traditional augmentation techniques. In essence, this work encapsulates the historical trajectory of distributed optimization and underscores the promising prospects of ALADIN in addressing non-convex optimization challenges.

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