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Oct, 2022
异步分布式Dropout实现高效轻量化联邦学习
Efficient and Light-Weight Federated Learning via Asynchronous Distributed Dropout
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Chen Dun, Mirian Hipolito, Chris Jermaine, Dimitrios Dimitriadis, Anastasios Kyrillidis
TL;DR
提出了一种利用辍学技术处理分布式异构设备的异步联邦学习(FL)框架AsyncDrop,有效减少了通信成本和训练时间,提高了非iid FL场景的最终测试精度。
Abstract
asynchronous learning
protocols have regained attention lately, especially in the
federated learning
(FL) setup, where slower clients can severely impede the learning process. Herein, we propose \texttt{
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