Saved in:
Bibliographic Details
Main Authors: Huang, Rui, Liu, Changxin, Chen, Wen-Hua, Shi, Yang
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.11357
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913115473444864
author Huang, Rui
Liu, Changxin
Chen, Wen-Hua
Shi, Yang
author_facet Huang, Rui
Liu, Changxin
Chen, Wen-Hua
Shi, Yang
contents This paper proposes a Byzantine-resilient consensus framework that simultaneously pursues two tightly coupled objectives: actively identifying Byzantine agents and guaranteeing resilient consensus among normal agents. Unlike existing methods that treat adversary mitigation as a passive filtering process, our approach embeds an active reputation learning mechanism into the consensus loop. Agents evaluate neighbors' behaviors using outlier-robust loss functions and historical information, and construct a reputation vector on a probability simplex via a mechanism that balances loss minimization with diversity-preserving exploration, representing dynamic beliefs over neighbor trustworthiness. These reputations are then used to form weighted local updates that suppress adversarial influence and improve agreement among normal agents, thereby reducing the bias in local loss evaluations and enabling more reliable subsequent reputation estimation. This learning-control co-design yields a closed-loop dual objective: improved consensus states enhance Byzantine identifiability, while refined reputations in turn improve consensus. A range of distributed systems experiments, benchmarking against classical resilient consensus methods, demonstrate superior Byzantine detection accuracy and significantly more reliable and scalable consensus.
format Preprint
id arxiv_https___arxiv_org_abs_2605_11357
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Byzantine-Resilient Consensus via Active Reputation Learning
Huang, Rui
Liu, Changxin
Chen, Wen-Hua
Shi, Yang
Optimization and Control
This paper proposes a Byzantine-resilient consensus framework that simultaneously pursues two tightly coupled objectives: actively identifying Byzantine agents and guaranteeing resilient consensus among normal agents. Unlike existing methods that treat adversary mitigation as a passive filtering process, our approach embeds an active reputation learning mechanism into the consensus loop. Agents evaluate neighbors' behaviors using outlier-robust loss functions and historical information, and construct a reputation vector on a probability simplex via a mechanism that balances loss minimization with diversity-preserving exploration, representing dynamic beliefs over neighbor trustworthiness. These reputations are then used to form weighted local updates that suppress adversarial influence and improve agreement among normal agents, thereby reducing the bias in local loss evaluations and enabling more reliable subsequent reputation estimation. This learning-control co-design yields a closed-loop dual objective: improved consensus states enhance Byzantine identifiability, while refined reputations in turn improve consensus. A range of distributed systems experiments, benchmarking against classical resilient consensus methods, demonstrate superior Byzantine detection accuracy and significantly more reliable and scalable consensus.
title Byzantine-Resilient Consensus via Active Reputation Learning
topic Optimization and Control
url https://arxiv.org/abs/2605.11357