Improving Dynamic Regret in Distributed Online Mirror Descent Using Primal and Dual Information

12/07/2021
by   Nima Eshraghi, et al.
0

We consider the problem of distributed online optimization, with a group of learners connected via a dynamic communication graph. The goal of the learners is to track the global minimizer of a sum of time-varying loss functions in a distributed manner. We propose a novel algorithm, termed Distributed Online Mirror Descent with Multiple Averaging Decision and Gradient Consensus (DOMD-MADGC), which is based on mirror descent but incorporates multiple consensus averaging iterations over local gradients as well as local decisions. The key idea is to allow the local learners to collect a sufficient amount of global information, which enables them to more accurately approximation the time-varying global loss, so that they can closely track the dynamic global minimizer over time. We show that the dynamic regret of DOMD-MADGC is upper bounded by the path length, which is defined as the cumulative distance between successive minimizers. The resulting bound improves upon the bounds of existing distributed online algorithms and removes the explicit dependence on T.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/16/2019

Online Learning over Dynamic Graphs via Distributed Proximal Gradient Algorithm

We consider the problem of tracking the minimum of a time-varying convex...
research
09/09/2016

Distributed Online Optimization in Dynamic Environments Using Mirror Descent

This work addresses decentralized online optimization in non-stationary ...
research
06/10/2023

Optimized Gradient Tracking for Decentralized Online Learning

This work considers the problem of decentralized online learning, where ...
research
12/20/2019

Distributed Online Optimization with Long-Term Constraints

We consider distributed online convex optimization problems, where the d...
research
02/21/2017

An Online Optimization Approach for Multi-Agent Tracking of Dynamic Parameters in the Presence of Adversarial Noise

This paper addresses tracking of a moving target in a multi-agent networ...
research
06/25/2021

Hierarchical Online Convex Optimization

We consider online convex optimization (OCO) over a heterogeneous networ...

Please sign up or login with your details

Forgot password? Click here to reset