FedCiR: Client-Invariant Representation Learning for Federated Non-IID Features

被引:1
|
作者
Li, Zijian [1 ]
Lin, Zehong [1 ]
Shao, Jiawei [1 ]
Mao, Yuyi [2 ]
Zhang, Jun [1 ]
机构
[1] Hong Kong Univ Sci & Technol, Dept Elect & Comp Engn, Hong Kong, Peoples R China
[2] Hong Kong Polytech Univ, Dept Elect & Elect Engn, Hong Kong, Peoples R China
关键词
Training; Representation learning; Feature extraction; Distributed databases; Data models; Mutual information; Servers; federated learning (FL); non-independent and identically distributed (non-IID) data; edge intelligence;
D O I
10.1109/TMC.2024.3376697
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Federated learning (FL) is a distributed learning paradigm that maximizes the potential of data-driven models for edge devices without sharing their raw data. However, devices often have non-independent and identically distributed (non-IID) data, meaning their local data distributions can vary significantly. The heterogeneity in input data distributions across devices, commonly referred to as the feature shift problem, can adversely impact the training convergence and accuracy of the global model. To analyze the intrinsic causes of the feature shift problem, we develop a generalization error bound in FL, which motivates us to propose FedCiR, a client-invariant representation learning framework that enables clients to extract informative and client-invariant features. Specifically, we improve the mutual information term between representations and labels to encourage representations to carry essential classification knowledge, and diminish the mutual information term between the client set and representations conditioned on labels to promote representations of clients to be client-invariant. We further incorporate two regularizers into the FL framework to bound the mutual information terms with an approximate global representation distribution to compensate for the absence of the ground-truth global representation distribution, thus achieving informative and client-invariant feature extraction. To achieve global representation distribution approximation, we propose a data-free mechanism performed by the server without compromising privacy. Extensive experiments demonstrate the effectiveness of our approach in achieving client-invariant representation learning and solving the data heterogeneity issue.
引用
收藏
页码:10509 / 10522
页数:14
相关论文
共 50 条
  • [31] Dynamic Clustering Federated Learning for Non-IID Data
    Chen, Ming
    Wu, Jinze
    Yin, Yu
    Huang, Zhenya
    Liu, Qi
    Chen, Enhong
    ARTIFICIAL INTELLIGENCE, CICAI 2022, PT III, 2022, 13606 : 119 - 131
  • [32] Accelerating Federated learning on non-IID data against stragglers
    Zhang, Yupeng
    Duan, Lingjie
    Cheung, Ngai-Man
    2022 IEEE INTERNATIONAL CONFERENCE ON SENSING, COMMUNICATION, AND NETWORKING (SECON WORKSHOPS), 2022, : 43 - 48
  • [33] Inverse Distance Aggregation for Federated Learning with Non-IID Data
    Yeganeh, Yousef
    Farshad, Azade
    Navab, Nassir
    Albarqouni, Shadi
    DOMAIN ADAPTATION AND REPRESENTATION TRANSFER, AND DISTRIBUTED AND COLLABORATIVE LEARNING, DART 2020, DCL 2020, 2020, 12444 : 150 - 159
  • [34] FEDERATED PAC-BAYESIAN LEARNING ON NON-IID DATA
    Zhao, Zihao
    Liu, Yang
    Ding, Wenbo
    Zhang, Xiao-Ping
    2024 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING, ICASSP 2024, 2024, : 5945 - 5949
  • [35] FedSG: Subgraph Federated Learning on Multiple Non-IID Graphs
    Wang, Yingcheng
    Guo, Songtao
    Qiao, Dewen
    2023 19TH INTERNATIONAL CONFERENCE ON MOBILITY, SENSING AND NETWORKING, MSN 2023, 2023, : 504 - 511
  • [36] A General Federated Learning Scheme with Blockchain on Non-IID Data
    Wu, Hao
    Zhao, Shengnan
    Zhao, Chuan
    Jing, Shan
    INFORMATION SECURITY AND CRYPTOLOGY, INSCRYPT 2023, PT I, 2024, 14526 : 126 - 140
  • [37] FedClust: Optimizing Federated Learning on Non-IID Data through Weight-Driven Client Clustering
    Islam, Md Sirajul
    Javaherian, Simin
    Xu, Fei
    Yuan, Xu
    Chen, Li
    Tzeng, Nian-Feng
    2024 IEEE INTERNATIONAL PARALLEL AND DISTRIBUTED PROCESSING SYMPOSIUM WORKSHOPS, IPDPSW 2024, 2024, : 1184 - 1186
  • [38] Long-Term Client Selection for Federated Learning With Non-IID Data: A Truthful Auction Approach
    Tan, Jinghong
    Liu, Zhian
    Guo, Kun
    Zhao, Mingxiong
    IEEE INTERNET OF THINGS JOURNAL, 2025, 12 (05): : 4953 - 4970
  • [39] Joint Client Scheduling and Wireless Resource Allocation for Heterogeneous Federated Edge Learning With Non-IID Data
    Yin, Tong
    Li, Lixin
    Lin, Wensheng
    Ni, Tao
    Liu, Ying
    Xu, Haitao
    Han, Zhu
    IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY, 2024, 73 (04) : 5742 - 5754
  • [40] FedBnR: Mitigating federated learning Non-IID problem by breaking the skewed task and reconstructing representation
    Wang, Chao
    Xia, Hui
    Xu, Shuo
    Chi, Hao
    Zhang, Rui
    Hu, Chunqiang
    Future Generation Computer Systems, 2024, 153 : 1 - 11