Temporal Adaptive Clustering for Heterogeneous Clients in Federated Learning

被引:1
|
作者
Ali, Syed Saqib [1 ]
Kumar, Ajit [1 ]
Ali, Mazhar [1 ]
Singh, Ankit Kumar [1 ]
Choi, Bong Jun [1 ]
机构
[1] Soongsil Univ, Sch Comp Sci & Engn, Seoul, South Korea
关键词
Federated Learning; Energy Demand Prediction; Clustered Federated Learning; Adaptive Clustered Federated Learning; Temporal based CFL;
D O I
10.1109/ICOIN59985.2024.10572174
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 has emerged as a highly promising approach for training machine learning models across a decentralized network of clients, with a key focus on maintaining the privacy of data. Nevertheless, the management of system heterogeneity and the handling of time-varying interests continue to pose hurdles for conventional federated learning methodologies. This work presents temporal-based adaptive clustered federated learning as a viable solution to the difficulties mentioned above. The evaluation of clusterability is conducted by calculating the Silhouette score following each iteration of federated training. The process of model aggregation is performed at the cluster level, resulting in enhanced convergence efficiency and improved accuracy of predictions. The inclusion of temporal-based adaptiveness in clustered federated learning for time-varying environments enables the system to dynamically modify cluster configurations in response to clients joining or leaving the network. The experimental results on a real-world dataset of an electric vehicle charging station network illustrate the efficacy of the suggested approach in terms of model correctness, convergence, and adaptability. The temporal-based adaptive clustered federated learning framework has demonstrated significant advancements compared to the current state-of-the-art clustered federated learning approaches.
引用
下载
收藏
页码:11 / 16
页数:6
相关论文
共 50 条
  • [41] SoFL: Clustered Federated Learning Based on Dual Clustering for Heterogeneous Data
    Zhang, Jianfei
    Qiao, Zhiming
    ELECTRONICS, 2024, 13 (18)
  • [42] Federated regressive learning: Adaptive weight updates through statistical information of clients
    Kim, Dong Seok
    Ahmad, Shabir
    Whangbo, Taeg Keun
    APPLIED SOFT COMPUTING, 2024, 166
  • [43] Adaptive Selection of Loss Function for Federated Learning Clients Under Adversarial Attacks
    Lee, Suchul
    IEEE ACCESS, 2024, 12 : 96051 - 96062
  • [44] HDHRFL: A hierarchical robust federated learning framework for dual-heterogeneous and noisy clients ☆
    Jiang, Yalan
    Wang, Dan
    Song, Bin
    Luo, Shengyang
    FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE, 2024, 160 : 185 - 196
  • [45] A Blockchain-Based Auditable Semi-Asynchronous Federated Learning for Heterogeneous Clients
    Zhuohao, Qian
    Firdaus, Muhammad
    Noh, Siwan
    Rhee, Kyung-Hyune
    IEEE ACCESS, 2023, 11 : 133394 - 133412
  • [46] Distributed Learning in Heterogeneous Environment: federated learning with adaptive aggregation and computation reduction
    Li, Jingxin
    Mahmoodi, Toktam
    Lam, Hak-Keung
    ICC 2023-IEEE INTERNATIONAL CONFERENCE ON COMMUNICATIONS, 2023, : 1976 - 1981
  • [47] ON FEDERATED LEARNING WITH ENERGY HARVESTING CLIENTS
    Shen, Cong
    Yang, Jing
    Xu, Jie
    2022 IEEE INTERNATIONAL CONFERENCE ON ACOUSTICS, SPEECH AND SIGNAL PROCESSING (ICASSP), 2022, : 8657 - 8661
  • [48] Hierarchical Federated Learning with Adaptive Clustering on Non-IID Data
    Tian, Yuqing
    Zhang, Zhaoyang
    Yang, Zhaohui
    Jin, Richeng
    2022 IEEE GLOBAL COMMUNICATIONS CONFERENCE (GLOBECOM 2022), 2022, : 627 - 632
  • [49] FedHybrid: A Hybrid Federated Optimization Method for Heterogeneous Clients
    Niu, Xiaochun
    Wei, Ermin
    IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2023, 71 : 150 - 163
  • [50] Heterogeneous Defect Prediction Based on Federated Reinforcement Learning via Gradient Clustering
    Wang, Aili
    Zhao, Yinghui
    Li, Guodong
    Zhang, Jun
    Wu, Haibin
    Iwahori, Yuji
    IEEE Access, 2022, 10 : 87832 - 87843