4.5 Article

Federated Learning Over Wireless Networks: Convergence Analysis and Resource Allocation

Journal

IEEE-ACM TRANSACTIONS ON NETWORKING
Volume 29, Issue 1, Pages 398-409

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TNET.2020.3035770

Keywords

Convergence; Computational modeling; Training; Data models; Resource management; Wireless communication; Wireless networks; Distributed machine learning; federated learning; optimization decomposition

Funding

  1. Vietnam National Foundation for Science and Technology Development (NAFOSTED) [102.02-2019.321]

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The paper introduces a Federated Learning algorithm called FEDL, which can handle heterogeneous data from mobile user equipment and is applied as a resource allocation optimization problem in wireless networks. Experimental results demonstrate that in various settings, FEDL outperforms the original FedAvg algorithm in terms of convergence rate and test accuracy.
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.

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