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首页> 外文期刊>IEEE/ACM Transactions on Networking >Federated Learning Over Wireless Networks: Convergence Analysis and Resource Allocation
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Federated Learning Over Wireless Networks: Convergence Analysis and Resource Allocation

机译:联合学习无线网络:收敛分析和资源分配

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摘要

There is an increasing interest in a fast-growing machine learning technique called Federated Learning (FL), in which the model training is distributed over mobile user equipment (UEs), exploiting UEs' local computation and training data. Despite its advantages such as preserving data privacy, FL still has challenges of heterogeneity across UEs' data and physical resources. To address these challenges, we first propose FEDL, a FL algorithm which can handle heterogeneous UE data without further assumptions except strongly convex and smooth loss functions. We provide a convergence rate characterizing the trade-off between local computation rounds of each UE to update its local model and global communication rounds to update the FL global model. We then employ FEDL in wireless networks as a resource allocation optimization problem that captures the trade-off between FEDL convergence wall clock time and energy consumption of UEs with heterogeneous computing and power resources. Even though the wireless resource allocation problem of FEDL is non-convex, we exploit this problem's structure to decompose it into three sub-problems and analyze their closed-form solutions as well as insights into problem design. Finally, we empirically evaluate the convergence of FEDL with PyTorch experiments, and provide extensive numerical results for the wireless resource allocation sub-problems. Experimental results show that FEDL outperforms the vanilla FedAvg algorithm in terms of convergence rate and test accuracy in various settings.
机译:在一种额外的快速增长的机器学习技术中越来越兴趣,其中称为联合学习(FL),其中模型训练分布在移动用户设备(UE)上,利用UES的本地计算和培训数据。尽管有优势,如保留数据隐私,但FL仍然对UES数据和物理资源的异质性具有挑战。为了解决这些挑战,我们首先提出FEDL,一种流动算法,其可以处理异构UE数据,而无需进一步的假设,除了强凸和平滑的损耗功能。我们提供了一种集合速率,其特征在于每个UE的本地计算轮换之间的权衡,以更新其本地模型和全局通信回合以更新FL全局模型。然后,我们在无线网络中采用FEDL作为资源分配优化问题,该优化问题捕获FEDL收敛壁时钟时间和UE的能量消耗与异构计算和电力资源之间的折衷。即使FEDL的无线资源分配问题是非凸的,我们也会利用此问题的结构来将其分解为三个子问题,并分析其封闭式解决方案以及对问题设计的见解。最后,我们凭经验评估了FEDL与Pytorch实验的融合,并为无线资源分配子问题提供了广泛的数值结果。实验结果表明,FEDL在各种设置中以收敛速率和测试精度优于Vanilla Fedivg算法。

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