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Communication-efficient federated learning.
Chen, Mingzhe; Shlezinger, Nir; Poor, H Vincent; Eldar, Yonina C; Cui, Shuguang.
Afiliação
  • Chen M; Shenzhen Research Institute of Big Data, The Chinese University of Hong Kong, Shenzhen 518172, China.
  • Shlezinger N; Department of Electrical and Computer Engineering, Princeton University, Princeton, NJ 08544.
  • Poor HV; School of Electrical and Computer Engineering, Ben-Gurion University of the Negev, Beer-Sheva 8410501, Israel.
  • Eldar YC; Department of Electrical and Computer Engineering, Princeton University, Princeton, NJ 08544; poor@princeton.edu shuguangcui@cuhk.edu.cn.
  • Cui S; Faculty of Math and Computer Science, Weizmann Institute of Science, Rehovot 7610001, Israel.
Proc Natl Acad Sci U S A ; 118(17)2021 04 27.
Article em En | MEDLINE | ID: mdl-33888586
ABSTRACT
Federated learning (FL) enables edge devices, such as Internet of Things devices (e.g., sensors), servers, and institutions (e.g., hospitals), to collaboratively train a machine learning (ML) model without sharing their private data. FL requires devices to exchange their ML parameters iteratively, and thus the time it requires to jointly learn a reliable model depends not only on the number of training steps but also on the ML parameter transmission time per step. In practice, FL parameter transmissions are often carried out by a multitude of participating devices over resource-limited communication networks, for example, wireless networks with limited bandwidth and power. Therefore, the repeated FL parameter transmission from edge devices induces a notable delay, which can be larger than the ML model training time by orders of magnitude. Hence, communication delay constitutes a major bottleneck in FL. Here, a communication-efficient FL framework is proposed to jointly improve the FL convergence time and the training loss. In this framework, a probabilistic device selection scheme is designed such that the devices that can significantly improve the convergence speed and training loss have higher probabilities of being selected for ML model transmission. To further reduce the FL convergence time, a quantization method is proposed to reduce the volume of the model parameters exchanged among devices, and an efficient wireless resource allocation scheme is developed. Simulation results show that the proposed FL framework can improve the identification accuracy and convergence time by up to 3.6% and 87% compared to standard FL.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2021 Tipo de documento: Article