Logarithmic Communication for Distributed Optimization in Multi-Agent Systems

Palma London, Shai Vardi, A. Wierman
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引用次数: 1

Abstract

Classically, the design of multi-agent systems is approached using techniques from distributed optimization such as dual descent and consensus algorithms. Such algorithms depend on convergence to global consensus before any individual agent can determine its local action. This leads to challenges with respect to communication overhead and robustness, and improving algorithms with respect to these measures has been a focus of the community for decades. This paper presents a new approach for multi-agent system design based on ideas from the emerging field of local computation algorithms. The framework we develop, LOcal Convex Optimization (LOCO), is the first local computation algorithm for convex optimization problems and can be applied in a wide-variety of settings. We demonstrate the generality of the framework via applications to Network Utility Maximization (NUM) and the distributed training of Support Vector Machines (SVMs), providing numerical results illustrating the improvement compared to classical distributed optimization approaches in each case.
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多智能体系统分布式优化的对数通信
传统上,多智能体系统的设计使用分布式优化技术,如双下降算法和共识算法。这种算法依赖于在任何个体代理确定其局部行为之前收敛到全局共识。这导致了通信开销和鲁棒性方面的挑战,并且改进这些度量的算法已经成为社区几十年来关注的焦点。基于局部计算算法这一新兴领域的思想,提出了一种新的多智能体系统设计方法。我们开发的框架,局部凸优化(LOCO),是凸优化问题的第一个局部计算算法,可以应用于各种各样的设置。我们通过应用于网络效用最大化(NUM)和支持向量机(svm)的分布式训练来证明框架的通用性,并提供了数值结果,说明了在每种情况下与经典分布式优化方法相比的改进。
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