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首页> 外文期刊>IEEE Communications Magazine >Federated Learning for Edge Networks: Resource Optimization and Incentive Mechanism
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Federated Learning for Edge Networks: Resource Optimization and Incentive Mechanism

机译:Edge Networks联合学习:资源优化和激励机制

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摘要

Recent years have witnessed a rapid proliferation of smart Internet of Things (IoT) devices. IoT devices with intelligence require the use of effective machine learning paradigms. Federated learning can be a promising solution for enabling IoT-based smart applications. In this article, we present the primary design aspects for enabling federated learning at the network edge. We model the incentive-based interaction between a global server and participating devices for federated learning via a Stackelberg game to motivate the participation of the devices in the federated learning process. We present several open research challenges with their possible solutions. Finally, we provide an outlook on future research.
机译:近年来见证了智能互联网的快速增殖(物联网)设备。具有智能的IOT设备需要使用有效的机器学习范式。联合学习可以是启用基于物联网的智能应用的有希望的解决方案。在本文中,我们介绍了在网络边缘启用联合学习的主要设计方面。我们通过Stackelberg游戏模拟全球服务器和参与设备之间的激励互动,以激发设备参与联合学习过程。我们使用可能的解决方案提出了几项开放研究挑战。最后,我们提供了未来研究的展望。

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