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Signal Processing Optimization for Federated Learning over Multi-User MIMO Uplink Channel

机译:用于多用户MIMO上行链路通道联合学习的信号处理优化

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In federated learning, remote mobile devices, which are equipped with local datasets, collaborate through a parameter server (PS) in order to train a machine learning model. An advantage of the federated learning is its effectiveness of preserving the privacy of local raw data. However, it is challenging to meet the demands on latency of exchanging data on wireless multiple access channel (MAC) with limited bandwidth. Over-the-air computation (AirComp) is a potential solution to this problem, which leverages the superposition property of MAC channel. This work addresses the signal processing optimization of both digital federated learning and AirComp schemes under multiuser MIMO uplink system. For either system, a mathematical optimization problem is formulated and tackled by deriving an iterative algorithm. Via numerical results, the mean squared error (MSE) performance of the digital and AirComp schemes is compared.
机译:在联合学习中,通过参数服务器(PS)配备有本地数据集的远程移动设备,以培训机器学习模型。联邦学习的优势是其维护本地原始数据隐私的有效性。然而,满足在具有有限带宽的无线多址通道(MAC)上交换数据的延迟需求挑战。空中计算(AIRCOMP)是解决此问题的潜在解决方案,它利用MAC通道的叠加特性。这项工作解决了多用户MIMO上行链路系统下数字联合学习和AIRCOMP方案的信号处理优化。对于任一系统,通过导出迭代算法来制定和解决数学优化问题。通过数值结果,比较了数字和空气谱方案的平均平方误差(MSE)性能。

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