FedFSL-CFRD: Personalized Federated Few-Shot Learning with Collaborative Feature Representation Disentanglement

Authors

  • Shanfeng Wang Key Laboratory of Collaborative Intelligence Systems, Ministry of Education, Xidian University School of Cyber Engineering, Xidian University
  • Jianzhao Li Key Laboratory of Collaborative Intelligence Systems, Ministry of Education, Xidian University Guangzhou Institute of Technology, Xidian University
  • Zaitian Liu Key Laboratory of Collaborative Intelligence Systems, Ministry of Education, Xidian University School of Cyber Engineering, Xidian University
  • Yourun Zhang Key Laboratory of Collaborative Intelligence Systems, Ministry of Education, Xidian University
  • Maoguo Gong Key Laboratory of Collaborative Intelligence Systems, Ministry of Education, Xidian University Academy of Artificial Intelligence, College of Mathematics Science, Inner Mongolia Normal University

DOI:

https://doi.org/10.1609/aaai.v39i20.35423

Abstract

Federated few-shot learning (FedFSL) aims to enable the clients to obtain personalized generalization models for unseen categories with only a small number of referenceable samples in the distributed collaborative training paradigm. Most existing FedFSL-related algorithms suffer from domain bias and feature coupling in the presence of data heterogeneity and sample scarcity. In this work, we propose a collaborative feature representation disentanglement (CFRD) scheme for FedFSL to address these issues. After each client receives the global aggregation parameters, the original feature representation is decoupled into global communal features and local personality features with personalized bias representation, to maintain both global consistency and local relevance in the first feature representation disentanglement. On the few-shot metric space about the second feature representation disentanglement, category-independent information is encoded by class-specific and class-irrelevant reconstructions to separate the discriminative features. The proposed scheme collaboratively accomplishes global domain bias feature disentanglement and local category degradation feature disentanglement from client-wise and class-wise. Experiments on three few-shot benchmark datasets conforming to the FedFSL paradigm demonstrate that our proposed method outperforms state-of-the-art approaches in both global generality and local specificity.

Downloads

Published

2025-04-11

How to Cite

Wang, S., Li, J., Liu, Z., Zhang, Y., & Gong, M. (2025). FedFSL-CFRD: Personalized Federated Few-Shot Learning with Collaborative Feature Representation Disentanglement. Proceedings of the AAAI Conference on Artificial Intelligence, 39(20), 21243–21251. https://doi.org/10.1609/aaai.v39i20.35423

Issue

Section

AAAI Technical Track on Machine Learning VI