LGAIAug 15, 2022

Energy and Spectrum Efficient Federated Learning via High-Precision Over-the-Air Computation

arXiv:2208.07237v119 citationsh-index: 26
Originality Incremental advance
AI Analysis

This addresses energy and spectrum constraints for mobile devices in federated learning, presenting an incremental improvement over existing methods.

The paper tackles the challenges of spectrum and energy inefficiency in federated learning (FL) on mobile devices by proposing a multi-bit over-the-air computation approach and an energy-efficient design, achieving improvements in spectrum utilization, energy efficiency, and learning accuracy as shown in simulations.

Federated learning (FL) enables mobile devices to collaboratively learn a shared prediction model while keeping data locally. However, there are two major research challenges to practically deploy FL over mobile devices: (i) frequent wireless updates of huge size gradients v.s. limited spectrum resources, and (ii) energy-hungry FL communication and local computing during training v.s. battery-constrained mobile devices. To address those challenges, in this paper, we propose a novel multi-bit over-the-air computation (M-AirComp) approach for spectrum-efficient aggregation of local model updates in FL and further present an energy-efficient FL design for mobile devices. Specifically, a high-precision digital modulation scheme is designed and incorporated in the M-AirComp, allowing mobile devices to upload model updates at the selected positions simultaneously in the multi-access channel. Moreover, we theoretically analyze the convergence property of our FL algorithm. Guided by FL convergence analysis, we formulate a joint transmission probability and local computing control optimization, aiming to minimize the overall energy consumption (i.e., iterative local computing + multi-round communications) of mobile devices in FL. Extensive simulation results show that our proposed scheme outperforms existing ones in terms of spectrum utilization, energy efficiency, and learning accuracy.

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