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Auteurs principaux: Lin, Yuyan, Zhou, Hao, Hu, Chengming, Liu, Xue, Chen, Hao, Xin, Yan, Jianzhong, Zhang
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2506.06519
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author Lin, Yuyan
Zhou, Hao
Hu, Chengming
Liu, Xue
Chen, Hao
Xin, Yan
Jianzhong
Zhang
author_facet Lin, Yuyan
Zhou, Hao
Hu, Chengming
Liu, Xue
Chen, Hao
Xin, Yan
Jianzhong
Zhang
contents 6G networks have become increasingly complicated due to novel network architecture and newly emerging signal processing and transmission techniques, leading to significant burdens to 6G network management. Large language models (LLMs) have recently been considered a promising technique to equip 6G networks with AI-native intelligence. Different from most existing studies that only consider a single LLM, this work involves a multi-LLM debate-based scheme for 6G network management, where multiple LLMs can collaboratively improve the initial solution sequentially. Considering the complex nature of 6G domain, we propose a novel hierarchical debate scheme: LLMs will first debate the sub-task decomposition, and then debate each subtask step-by-step. Such a hierarchical approach can significantly reduce the overall debate difficulty by sub-task decomposition, aligning well with the complex nature of 6G networks and ensuring the final solution qualities. In addition, to better evaluate the proposed technique, we have defined a novel dataset named 6GPlan, including 110 complex 6G network management tasks and 5000 keyword solutions. Finally, the experiments show that the proposed hierarchical debate can significantly improve performance compared to baseline techniques, e.g. more than 30% coverage rate and global recall rate improvement.
format Preprint
id arxiv_https___arxiv_org_abs_2506_06519
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Hierarchical Debate-Based Large Language Model (LLM) for Complex Task Planning of 6G Network Management
Lin, Yuyan
Zhou, Hao
Hu, Chengming
Liu, Xue
Chen, Hao
Xin, Yan
Jianzhong
Zhang
Systems and Control
6G networks have become increasingly complicated due to novel network architecture and newly emerging signal processing and transmission techniques, leading to significant burdens to 6G network management. Large language models (LLMs) have recently been considered a promising technique to equip 6G networks with AI-native intelligence. Different from most existing studies that only consider a single LLM, this work involves a multi-LLM debate-based scheme for 6G network management, where multiple LLMs can collaboratively improve the initial solution sequentially. Considering the complex nature of 6G domain, we propose a novel hierarchical debate scheme: LLMs will first debate the sub-task decomposition, and then debate each subtask step-by-step. Such a hierarchical approach can significantly reduce the overall debate difficulty by sub-task decomposition, aligning well with the complex nature of 6G networks and ensuring the final solution qualities. In addition, to better evaluate the proposed technique, we have defined a novel dataset named 6GPlan, including 110 complex 6G network management tasks and 5000 keyword solutions. Finally, the experiments show that the proposed hierarchical debate can significantly improve performance compared to baseline techniques, e.g. more than 30% coverage rate and global recall rate improvement.
title Hierarchical Debate-Based Large Language Model (LLM) for Complex Task Planning of 6G Network Management
topic Systems and Control
url https://arxiv.org/abs/2506.06519