Adaptive Retransmission Design for Wireless Federated Edge Learning

被引:0
|
作者
XU Xinyi [1 ]
LIU Shengli [1 ]
YU Guanding [1 ]
机构
[1] Zhejiang University
关键词
D O I
暂无
中图分类号
TN92 [无线通信]; TP181 [自动推理、机器学习];
学科分类号
080402 ; 080904 ; 0810 ; 081001 ;
摘要
As a popular distributed machine learning framework, wireless federated edge learning(FEEL) can keep original data local, while uploading model training updates to protect privacy and prevent data silos. However, since wireless channels are usually unreliable, there is no guarantee that the model updates uploaded by local devices are correct, thus greatly degrading the performance of the wireless FEEL. Conventional retransmission schemes designed for wireless systems generally aim to maximize the system throughput or minimize the packet error rate, which is not suitable for the FEEL system. A novel retransmission scheme is proposed for the FEEL system to make a tradeoff between model training accuracy and retransmission latency. In the proposed scheme, a retransmission device selection criterion is first designed based on the channel condition, the number of local data, and the importance of model updates. In addition, we design the air interface signaling under this retransmission scheme to facilitate the implementation of the proposed scheme in practical scenarios. Finally, the effectiveness of the proposed retransmission scheme is validated through simulation experiments.
引用
收藏
页码:3 / 14
页数:12
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