Enregistré dans:
Détails bibliographiques
Auteurs principaux: Liu, Bingqian, Wen, Guanghui, Chen, Liyuan, Hong, Yiguang
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2507.22357
Tags: Ajouter un tag
Pas de tags, Soyez le premier à ajouter un tag!
_version_ 1866913965801472000
author Liu, Bingqian
Wen, Guanghui
Chen, Liyuan
Hong, Yiguang
author_facet Liu, Bingqian
Wen, Guanghui
Chen, Liyuan
Hong, Yiguang
contents This paper addresses the challenge of solving the generalized Nash Equilibrium seeking problem for decentralized stochastic online multi-cluster games amidst Byzantine agents. During the game process, each honest agent is influenced by both randomness and malicious information propagated by Byzantine agents. Additionally, none of the agents have prior knowledge about the number and identities of Byzantine agents. Furthermore, the stochastic local cost function and coupled global constraint function are only revealed to each agent in hindsight at each round. One major challenge in addressing such an issue is the stringent requirement for each honest agent to effectively mitigate the effect of decision variables of Byzantine agents on its local cost functions. To overcome this challenge, a decentralized Byzantine-resilient algorithm for online stochastic generalized Nash equilibrium (SGNE) seeking is developed, which combines variance reduction, dynamic average consensus, and robust aggregation techniques. Moreover, novel resilient versions of system-wide regret and constraint violation are proposed as metrics for evaluating the performance of the online algorithm. Under certain conditions, it is proven that these resilient metrics grow sublinearly over time in expectation. Numerical simulations are conducted to validate the theoretical findings.
format Preprint
id arxiv_https___arxiv_org_abs_2507_22357
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Decentralized online stochastic generalized Nash Equilibrium seeking for multi-cluster games: A Byzantine-resilient algorithm
Liu, Bingqian
Wen, Guanghui
Chen, Liyuan
Hong, Yiguang
Optimization and Control
This paper addresses the challenge of solving the generalized Nash Equilibrium seeking problem for decentralized stochastic online multi-cluster games amidst Byzantine agents. During the game process, each honest agent is influenced by both randomness and malicious information propagated by Byzantine agents. Additionally, none of the agents have prior knowledge about the number and identities of Byzantine agents. Furthermore, the stochastic local cost function and coupled global constraint function are only revealed to each agent in hindsight at each round. One major challenge in addressing such an issue is the stringent requirement for each honest agent to effectively mitigate the effect of decision variables of Byzantine agents on its local cost functions. To overcome this challenge, a decentralized Byzantine-resilient algorithm for online stochastic generalized Nash equilibrium (SGNE) seeking is developed, which combines variance reduction, dynamic average consensus, and robust aggregation techniques. Moreover, novel resilient versions of system-wide regret and constraint violation are proposed as metrics for evaluating the performance of the online algorithm. Under certain conditions, it is proven that these resilient metrics grow sublinearly over time in expectation. Numerical simulations are conducted to validate the theoretical findings.
title Decentralized online stochastic generalized Nash Equilibrium seeking for multi-cluster games: A Byzantine-resilient algorithm
topic Optimization and Control
url https://arxiv.org/abs/2507.22357