Semi-Federated Learning: Convergence Analysis and Optimization of A Hybrid Learning Framework
Jingheng Zheng, Wanli Ni, Hui Tian, Deniz Gunduz, Tony Q. S. Quek, Zhu, Han

TL;DR
This paper introduces Semi-Federated Learning, a hybrid framework leveraging both devices and base stations for model training, with convergence analysis and communication-efficient optimization, outperforming traditional federated learning.
Contribution
It proposes a novel SemiFL paradigm combining centralized and federated learning, with convergence analysis and an optimized transceiver design for wireless communication efficiency.
Findings
SemiFL outperforms conventional FL in accuracy.
Theoretical convergence bounds are derived for SemiFL.
Proposed optimization improves communication efficiency.
Abstract
Under the organization of the base station (BS), wireless federated learning (FL) enables collaborative model training among multiple devices. However, the BS is merely responsible for aggregating local updates during the training process, which incurs a waste of the computational resource at the BS. To tackle this issue, we propose a semi-federated learning (SemiFL) paradigm to leverage the computing capabilities of both the BS and devices for a hybrid implementation of centralized learning (CL) and FL. Specifically, each device sends both local gradients and data samples to the BS for training a shared global model. To improve communication efficiency over the same time-frequency resources, we integrate over-the-air computation for aggregation and non-orthogonal multiple access for transmission by designing a novel transceiver structure. To gain deep insights, we conduct convergence…
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