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Performance Optimization of Federated Learning over Mobile Wireless Networks

机译:移动无线网络上联合学习的性能优化

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In this paper, the problem of training federated learning (FL) algorithms over a wireless network with mobile users is studied. In the considered model, several mobile users and a network base station (BS) cooperatively perform an FL algorithm. In particular, the wireless mobile users train their local FL models and send the trained local FL model parameters to the BS. The BS will then integrate the received local FL models to generate a global FL model and send it back to all users. Due to the limited training time at each iteration, the number of users that can transmit their local FL models to the BS will be affected by changes in the users’ locations and wireless channels. In this paper, this joint learning, user selection, and wireless resource allocation problem is formulated as an optimization problem whose goal is to minimize the FL loss function, which captures the FL performance, while meeting the transmission delay requirement. To solve this problem, a closed-form expression for the expected convergence rate of the FL algorithm is first derived to quantify the impact of the users’ mobility and wireless factors on FL. Then, based on the expected FL convergence rate, the user selection and uplink resource allocation is optimized at each FL iteration so as to minimize the FL loss function while satisfying the FL parameter transmission delay requirement. Simulation results show that the proposed approach can reduce the FL loss function value by up to 20% compared to a standard FL algorithm.
机译:本文研究了在具有移动用户的无线网络上训练联合学习(FL)算法的问题。在考虑的模型中,几个移动用户和一个网络基站(BS)共同执行FL算法。特别地,无线移动用户训练他们的本地FL模型,并且将训练后的本地FL模型参数发送到BS。然后,BS将集成接收到的本地FL模型以生成全局FL模型并将其发送回所有用户。由于每次迭代的培训时间有限,因此可以将其本地FL模型传输到BS的用户数量将受到用户位置和无线信道变化的影响。在本文中,该联合学习,用户选择和无线资源分配问题被表述为一个优化问题,其目标是最小化FL损失函数,从而在满足传输延迟要求的同时捕获FL性能。为了解决此问题,首先导出了FL算法的预期收敛率的闭式表达式,以量化用户的移动性和无线因素对FL的影响。然后,基于期望的FL收敛速率,在每个FL迭代中优化用户选择和上行链路资源分配,以在满足FL参数传输延迟要求的同时最小化FL损失函数。仿真结果表明,与标准的FL算法相比,该方法可以将FL损失函数的值减少多达20%。

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