论文标题

边缘智能网络联合学习的强大设计

Robust Design of Federated Learning for Edge-Intelligent Networks

论文作者

Qi, Qiao, Chen, Xiaoming

论文摘要

大众数据运输,低延迟无线服务和高级人工智能(AI)技术驱动了用于无线网络的新范式的出现,即边缘智能网络,这些网络比传统的云网络更有效,更灵活。考虑到用户的隐私,基于模型共享的联合学习(FL),将模型参数迁移而不是私人数据从边缘设备到中央云特别有吸引力。由于基本站(BS)和边缘设备之间的高维模型参数的多回合更新,通信可靠性是Edge-Intelligent网络的关键问题。我们揭示了模型广播过程中通过通道褪色,干扰和噪声引起的无线通道在模型广播和模型聚集过程中产生的错误的影响,尤其是在存在通道不确定性时。为了减轻影响,我们为具有通道不确定性的边缘智能网络提出了一种强大的FL算法,该网络是通过关节设备选择和收发器设计的最坏情况的优化问题。最后,仿真结果验证了所提出算法的鲁棒性和有效性。

Mass data traffics, low-latency wireless services and advanced artificial intelligence (AI) technologies have driven the emergence of a new paradigm for wireless networks, namely edge-intelligent networks, which are more efficient and flexible than traditional cloud-intelligent networks. Considering users' privacy, model sharing-based federated learning (FL) that migrates model parameters but not private data from edge devices to a central cloud is particularly attractive for edge-intelligent networks. Due to multiple rounds of iterative updating of high-dimensional model parameters between base station (BS) and edge devices, the communication reliability is a critical issue of FL for edge-intelligent networks. We reveal the impacts of the errors generated during model broadcast and model aggregation via wireless channels caused by channel fading, interference and noise on the accuracy of FL, especially when there exists channel uncertainty. To alleviate the impacts, we propose a robust FL algorithm for edge-intelligent networks with channel uncertainty, which is formulated as a worst-case optimization problem with joint device selection and transceiver design. Finally, simulation results validate the robustness and effectiveness of the proposed algorithm.

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