The robustness of distributed optimization is an emerging field of study, motivated by various applications of distributed optimization including distributed machine learning, distributed sensing, and swarm robotics. With the rapid expansion of the scale of distributed systems, resilient distributed algorithms for optimization are needed, in order to mitigate system failures, communication issues, or even malicious attacks. This survey investigates the current state of fault-tolerance research in distributed optimization, and aims to provide an overview of the existing studies on both fault-tolerant distributed optimization theories and applicable algorithms.
翻译:分布式优化的稳健性是一个新兴的研究领域,其动机是分布式优化的各种应用,包括分布式机器学习、分布式遥感和群装机器人。 随着分布式系统规模的迅速扩大,需要有弹性分布式优化算法,以缓解系统故障、通信问题,甚至恶意袭击。 这项调查调查调查了分布式优化中目前对错误容忍研究的现状,目的是概述现有关于错误容忍性分布式优化理论和适用算法的研究。