TY - GEN
T1 - IPCS
T2 - 2025 IEEE/CIC International Conference on Communications in China, ICCC 2025
AU - Li, Xuerui
AU - Zhao, Yangming
AU - Qiao, Chunming
N1 - Publisher Copyright:
© 2025 IEEE.
PY - 2025
Y1 - 2025
N2 - Large language models (LLMs) excel in many applications, but their centralized training limits access to distributed data and computational resources, hindering scalability. Federated learning (FL) offers a promising solution by enabling collaborative training. In practical large-scale implementations, federated learning typically adopts a multitiered architecture rather than a conventional flat structure. This hierarchical approach incorporates multiple layers of edge servers that mediate between the cloud server and end devices, forming the multi-level federated learning. However, optimizing client and server selection in such complex systems remains a critical challenge. Traditional Multi-armed Bandit (MAB)based client selection methods yield suboptimal local choices in multi-level FL systems due to their inability to account for global constraints imposed by neighboring nodes. To overcome this limitation, we introduce Interior-Point Method based Client Selection (IPCS), a novel approach that leverages Interior-point Policy Convex Optimization (IPO) to enhance client and server selection in real-world multi-level federated learning. Unlike MAB-based methods, IPCS transforms the selection objective into a logarithmic barrier function, enabling it to efficiently identify the global optimum under complex hierarchical constraints. Our experiments demonstrate that IPCS significantly outperforms MAB-based methods and another state-of-the-art baseline, achieving higher model accuracy, faster convergence, and lower communication costs. These results highlight the effectiveness of IPCS in optimizing largescale, multi-level federated learning systems, paving the way for more scalable and efficient LLM training frameworks.
AB - Large language models (LLMs) excel in many applications, but their centralized training limits access to distributed data and computational resources, hindering scalability. Federated learning (FL) offers a promising solution by enabling collaborative training. In practical large-scale implementations, federated learning typically adopts a multitiered architecture rather than a conventional flat structure. This hierarchical approach incorporates multiple layers of edge servers that mediate between the cloud server and end devices, forming the multi-level federated learning. However, optimizing client and server selection in such complex systems remains a critical challenge. Traditional Multi-armed Bandit (MAB)based client selection methods yield suboptimal local choices in multi-level FL systems due to their inability to account for global constraints imposed by neighboring nodes. To overcome this limitation, we introduce Interior-Point Method based Client Selection (IPCS), a novel approach that leverages Interior-point Policy Convex Optimization (IPO) to enhance client and server selection in real-world multi-level federated learning. Unlike MAB-based methods, IPCS transforms the selection objective into a logarithmic barrier function, enabling it to efficiently identify the global optimum under complex hierarchical constraints. Our experiments demonstrate that IPCS significantly outperforms MAB-based methods and another state-of-the-art baseline, achieving higher model accuracy, faster convergence, and lower communication costs. These results highlight the effectiveness of IPCS in optimizing largescale, multi-level federated learning systems, paving the way for more scalable and efficient LLM training frameworks.
KW - Client Selection
KW - Convex Optimization
KW - Federated Learning
KW - Reinforcement Learning
UR - https://www.scopus.com/pages/publications/105017802401
U2 - 10.1109/ICCC65529.2025.11148666
DO - 10.1109/ICCC65529.2025.11148666
M3 - Conference contribution
AN - SCOPUS:105017802401
T3 - 2025 IEEE/CIC International Conference on Communications in China:Shaping the Future of Integrated Connectivity, ICCC 2025
BT - 2025 IEEE/CIC International Conference on Communications in China:Shaping the Future of Integrated Connectivity, ICCC 2025
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 10 August 2025 through 13 August 2025
ER -