Decentralized Composite Optimization in Stochastic Networks: A Dual Averaging Approach With Linear Convergence
成果类型:
Article
署名作者:
Liu, Changxin; Zhou, Zirui; Pei, Jian; Zhang, Yong; Shi, Yang
署名单位:
University of Victoria; Huawei Technologies; Simon Fraser University
刊物名称:
IEEE TRANSACTIONS ON AUTOMATIC CONTROL
ISSN/ISSBN:
0018-9286
DOI:
10.1109/TAC.2022.3209951
发表日期:
2023
页码:
4650-4665
关键词:
Consensus control
Composite optimization
distributed optimization
dual averaging
Multi-agent systems
摘要:
Decentralized optimization, particularly the class of decentralized composite convex optimization (DCCO) problems, has found many applications. Due to ubiquitous communication congestion and random dropouts in practice, it is highly desirable to design decentralized algorithms that can handle stochastic communication networks. However, most existing algorithms for DCCO only work in networks that are deterministically connected during bounded communication rounds, and therefore, cannot be extended to stochastic networks. In this article, we propose a new decentralized dual averaging (DDA) algorithm that can solve DCCO in stochastic networks. Under a rather mild condition on stochastic networks, we show that the proposed algorithm attains global linear convergence if each local objective function is strongly convex. Our algorithm substantially improves the existing DDA-type algorithms as the latter were only known to converge sublinearly prior to our work. The key to achieving the improved rate is the design of a novel dynamic averaging consensus protocol for DDA, which intuitively leads to more accurate local estimates of the global dual variable. To the best of our knowledge, this is the first linearly convergent DDA-type decentralized algorithm and also the first algorithm that attains global linear convergence for solving DCCO in stochastic networks. Numerical results are also presented to support our design and analysis.