Distributed Online Optimization in Dynamic Environments Using Mirror Descent
Shahin Shahrampour, Ali Jadbabaie

TL;DR
This paper introduces a decentralized Mirror Descent algorithm for online optimization in dynamic, non-stationary environments, enabling networks of agents to track evolving minimizers with provable regret bounds.
Contribution
It develops a novel decentralized Mirror Descent method that accounts for dynamics and noise, providing theoretical regret guarantees and practical applications.
Findings
Regret bounds scale with network spectral gap and minimizer deviation
Algorithm effectively tracks dynamic parameters in decentralized settings
Numerical experiments confirm theoretical performance improvements
Abstract
This work addresses decentralized online optimization in non-stationary environments. A network of agents aim to track the minimizer of a global time-varying convex function. The minimizer evolves according to a known dynamics corrupted by an unknown, unstructured noise. At each time, the global function can be cast as a sum of a finite number of local functions, each of which is assigned to one agent in the network. Moreover, the local functions become available to agents sequentially, and agents do not have a prior knowledge of the future cost functions. Therefore, agents must communicate with each other to build an online approximation of the global function. We propose a decentralized variation of the celebrated Mirror Descent, developed by Nemirovksi and Yudin. Using the notion of Bregman divergence in lieu of Euclidean distance for projection, Mirror Descent has been shown to be a…
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