4.7 Article

A General Framework for Decentralized Optimization With First-Order Methods

Journal

PROCEEDINGS OF THE IEEE
Volume 108, Issue 11, Pages 1869-1889

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JPROC.2020.3024266

Keywords

Peer-to-peer computing; Cost function; Machine learning; Optimal control; Convergence; Data science; Signal processing; Consensus; decentralized optimization; gradient descent (GD); machine learning; stochastic methods

Funding

  1. NSF [CCF-1717391]
  2. Shenzhen Research Institute of Big Data (SRIBD) [J00120190011]

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Decentralized optimization to minimize a finite sum of functions, distributed over a network of nodes, has been a significant area within control and signal-processing research due to its natural relevance to optimal control and signal estimation problems. More recently, the emergence of sophisticated computing and large-scale data science needs have led to a resurgence of activity in this area. In this article, we discuss decentralized first-order gradient methods, which have found tremendous success in control, signal processing, and machine learning problems, where such methods, due to their simplicity, serve as the first method of choice for many complex inference and training tasks. In particular, we provide a general framework of decentralized first-order methods that is applicable to directed and undirected communication networks alike and show that much of the existing work on optimization and consensus can be related explicitly to this framework. We further extend the discussion to decentralized stochastic first-order methods that rely on stochastic gradients at each node and describe how local variance reduction schemes, previously shown to have promise in the centralized settings, are able to improve the performance of decentralized methods when combined with what is known as gradient tracking. We motivate and demonstrate the effectiveness of the corresponding methods in the context of machine learning and signal-processing problems that arise in decentralized environments.

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