Federated Feature Concatenate Method for Heterogeneous Computing in Federated Learning

被引:2
|
作者
Chung, Wu -Chun [1 ]
Chang, Yung -Chin [1 ]
Hsu, Ching-Hsien [2 ,3 ]
Chang, Chih-Hung [4 ]
Hung, Che-Lun [4 ,5 ]
机构
[1] Chung Yuan Christian Univ, Dept Informat & Comp Engn, Taoyuan, Taiwan
[2] Asia Univ, Dept Comp Sci & Informat Engn, Taichung, Taiwan
[3] China Med Univ, China Med Univ Hosp, Dept Med Res, Taichung, Taiwan
[4] Providence Univ, Dept Comp Sci & Commun Engn, Taichung, Taiwan
[5] Natl Yang Ming Chiao Tung Univ, Inst Biomed Informat, Taipei, Taiwan
来源
CMC-COMPUTERS MATERIALS & CONTINUA | 2023年 / 75卷 / 01期
关键词
Federated learning; deep learning; artificial intelligence; heterogeneous computing; COMMUNICATION;
D O I
10.32604/cmc.2023.035720
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 is an emerging machine learning technique that enables clients to collaboratively train a deep learning model without uploading raw data to the aggregation server. Each client may be equipped with different computing resources for model training. The client equipped with a lower computing capability requires more time for model training, resulting in a prolonged training time in federated learning. Moreover, it may fail to train the entire model because of the out-of-memory issue. This study aims to tackle these problems and propose the federated feature concatenate (FedFC) method for federated learning considering heterogeneous clients. FedFC leverages the model splitting and feature concatenate for offloading a portion of the training loads from clients to the aggregation server. Each client in FedFC can collaboratively train a model with different cutting layers. Therefore, the specific features learned in the deeper layer of the server -side model are more identical for the data class classification. Accordingly, FedFC can reduce the computation loading for the resource-constrained client and accelerate the convergence time. The performance effectiveness is verified by considering different dataset scenarios, such as data and class imbalance for the participant clients in the experiments. The performance impacts of different cutting layers are evaluated during the model training. The experimental results show that the co-adapted features have a critical impact on the adequate classification of the deep learning model. Overall, FedFC not only shortens the convergence time, but also improves the best accuracy by up to 5.9% and 14.5% when compared to conventional federated learning and splitfed, respectively. In conclusion, the proposed approach is feasible and effective for heterogeneous clients in federated learning.
引用
收藏
页码:351 / 371
页数:21
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