SYITLGOCDec 19, 2013

Asynchronous Adaptation and Learning over Networks --- Part I: Modeling and Stability Analysis

arXiv:1312.5434v388 citations
Originality Incremental advance
AI Analysis

This work provides a theoretical foundation for resilient cooperative networks in distributed systems, though it is incremental as it builds on existing asynchronous methods.

The authors analyzed the stability and performance of asynchronous distributed optimization networks under random uncertainties like link failures and data delays, finding that mean-square-error degrades only by O(ν) with a small step-size while convergence rate remains largely unchanged.

In this work and the supporting Parts II [2] and III [3], we provide a rather detailed analysis of the stability and performance of asynchronous strategies for solving distributed optimization and adaptation problems over networks. We examine asynchronous networks that are subject to fairly general sources of uncertainties, such as changing topologies, random link failures, random data arrival times, and agents turning on and off randomly. Under this model, agents in the network may stop updating their solutions or may stop sending or receiving information in a random manner and without coordination with other agents. We establish in Part I conditions on the first and second-order moments of the relevant parameter distributions to ensure mean-square stable behavior. We derive in Part II expressions that reveal how the various parameters of the asynchronous behavior influence network performance. We compare in Part III the performance of asynchronous networks to the performance of both centralized solutions and synchronous networks. One notable conclusion is that the mean-square-error performance of asynchronous networks shows a degradation only of the order of $O(ν)$, where $ν$ is a small step-size parameter, while the convergence rate remains largely unaltered. The results provide a solid justification for the remarkable resilience of cooperative networks in the face of random failures at multiple levels: agents, links, data arrivals, and topology.

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