SFedHIFI: Fire Rate-Based Heterogeneous Information Fusion for Spiking Federated Learning

Authors

  • Ran Tao Complex Laboratory of New Finance and Economics, School of Computing and Artificial Intelligence, Southwestern University of Finance and Economics, China Engineering Research Center of Intelligent Finance, Ministry of Education, China
  • Qiugang Zhan Complex Laboratory of New Finance and Economics, School of Computing and Artificial Intelligence, Southwestern University of Finance and Economics, China Engineering Research Center of Intelligent Finance, Ministry of Education, China
  • Shantian Yang Complex Laboratory of New Finance and Economics, School of Computing and Artificial Intelligence, Southwestern University of Finance and Economics, China Engineering Research Center of Intelligent Finance, Ministry of Education, China Kash Institute of Electronics and Information Industry, China
  • Xiurui Xie Laboratory of Intelligent Collaborative Computing, University of Electronic Science and Technology of China, China
  • Qi Tian Huawei Inc., China Complex Laboratory of New Finance and Economics, School of Computing and Artificial Intelligence, Southwestern University of Finance and Economics, China
  • Guisong Liu Complex Laboratory of New Finance and Economics, School of Computing and Artificial Intelligence, Southwestern University of Finance and Economics, China Engineering Research Center of Intelligent Finance, Ministry of Education, China Kash Institute of Electronics and Information Industry, China

DOI:

https://doi.org/10.1609/aaai.v40i31.39787

Abstract

Spiking Federated Learning (SFL) has been widely studied with the energy efficiency of Spiking Neural Networks (SNNs). However, existing SFL methods require model homogeneity and assume all clients have sufficient computational resources, resulting in the exclusion of some resource-constrained clients. To address the prevalent system heterogeneity in real-world scenarios, enabling heterogeneous SFL systems that allow clients to adaptively deploy models of different scales based on their local resources is crucial. To this end, we introduce SFedHIFI, a novel Spiking Federated Learning framework with Fire Rate-Based Heterogeneous Information Fusion. Specifically, SFedHIFI employs channel-wise matrix decomposition to deploy SNN models of adaptive complexity on clients with heterogeneous resources. Building on this, the proposed heterogeneous information fusion module enables cross-scale aggregation among models of different widths, thereby enhancing the utilization of diverse local knowledge. Extensive experiments on three public benchmarks demonstrate that SFedHIFI can effectively enable heterogeneous SFL, consistently outperforming all three baseline methods. Compared with ANN-based FL, it achieves significant energy savings with only a marginal trade-off in accuracy.

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Published

2026-03-14

How to Cite

Tao, R., Zhan, Q., Yang, S., Xie, X., Tian, Q., & Liu, G. (2026). SFedHIFI: Fire Rate-Based Heterogeneous Information Fusion for Spiking Federated Learning. Proceedings of the AAAI Conference on Artificial Intelligence, 40(31), 25878-25886. https://doi.org/10.1609/aaai.v40i31.39787

Issue

Section

AAAI Technical Track on Machine Learning VIII