DISTRIBUTED ACCELERATED NASH EQUILIBRIUM LEARNING FOR TWO-SUBNETWORK ZERO-SUM GAME WITH BILINEAR COUPLING

Xianlin Zeng, Lihua Dou, Jinqiang Cui

科研成果: 期刊稿件文章同行评审

摘要

This paper proposes a distributed accelerated first-order continuous-time algorithm for O(1=t2) convergence to Nash equilibria in a class of two-subnetwork zero-sum games with bi- linear couplings. First-order methods, which only use subgradients of functions, are frequently used in distributed/parallel algorithms for solving large-scale and big-data problems due to their simple structures. However, in the worst cases, first-order methods for two-subnetwork zero-sum games often have an asymptotic or O(1=t) convergence. In contrast to existing time-invariant first-order methods, this paper designs a distributed accelerated algorithm by combining saddle-point dynamics and time-varying derivative feedback techniques. If the parameters of the proposed algorithm are suitable, the algorithm owns O(1=t2) convergence in terms of the duality gap function without any uniform or strong convexity requirement. Numerical simulations show the efficacy of the algorithm.

源语言英语
页(从-至)418-436
页数19
期刊Kybernetika
59
3
DOI
出版状态已出版 - 2023

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