Convergence Analysis and Latency Minimization for Semi-Federated Learning in Massive IoT Networks

IF 5.3 2区 计算机科学 Q1 TELECOMMUNICATIONS IEEE Transactions on Green Communications and Networking Pub Date : 2023-08-29 DOI:10.1109/TGCN.2023.3309657
Jianyang Ren;Wanli Ni;Hui Tian;Gaofeng Nie
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Abstract

As the number of sensors becomes massive in Internet of Things (IoT) networks, the amount of data is humongous. To process data in real-time while protecting user privacy, federated learning (FL) has been regarded as an enabling technique to push edge intelligence into IoT networks with massive devices. However, FL latency increases dramatically due to the increase of the number of parameters in deep neural network and the limited computation and communication capabilities of IoT devices. To address this issue, we propose a semi-federated learning (SemiFL) paradigm in which network pruning and over-the-air computation are efficiently applied. To be specific, each small base station collects the raw data from its served sensors and trains its local pruned model. After that, the global aggregation of local gradients is achieved through over-the-air computation. We first analyze the performance of the proposed SemiFL by deriving its convergence upper bound. To reduce latency, a convergence-constrained SemiFL latency minimization problem is formulated. By decoupling the original problem into several sub-problems, iterative algorithms are designed to solve them efficiently. Finally, numerical simulations are conducted to verify the effectiveness of our proposed scheme in reducing latency and guaranteeing the identification accuracy.
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大规模物联网网络中半联邦学习的收敛分析与时延最小化
随着物联网(IoT)网络中传感器的数量越来越多,数据量也越来越大。为了在保护用户隐私的同时实时处理数据,联邦学习(FL)被认为是一种将边缘智能推向具有大量设备的物联网网络的使能技术。然而,由于深度神经网络中参数数量的增加以及物联网设备有限的计算和通信能力,FL延迟会急剧增加。为了解决这个问题,我们提出了一种半联邦学习(SemiFL)范式,其中有效地应用了网络修剪和空中计算。具体来说,每个小型基站从其服务的传感器收集原始数据并训练其本地修剪模型。然后,通过空中计算实现局部梯度的全局聚合。我们首先通过推导其收敛上界来分析所提出的半ifl的性能。为了减少延迟,提出了收敛约束的半ifl延迟最小化问题。通过将原问题解耦为若干子问题,设计迭代算法进行有效求解。最后,通过数值仿真验证了所提方案在降低时延和保证识别精度方面的有效性。
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来源期刊
IEEE Transactions on Green Communications and Networking
IEEE Transactions on Green Communications and Networking Computer Science-Computer Networks and Communications
CiteScore
9.30
自引率
6.20%
发文量
181
期刊最新文献
Table of Contents Guest Editorial Special Issue on Rate-Splitting Multiple Access for Future Green Communication Networks IEEE Transactions on Green Communications and Networking IEEE Communications Society Information Table of Contents
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