论文标题
通过无线网络进行沟通有效的联合学习,能源意识
Communication Efficient Federated Learning with Energy Awareness over Wireless Networks
论文作者
论文摘要
在联合学习(FL)中,减少通信开销是自参数服务器和移动设备通过无线链接共享培训参数以来的最关键挑战之一。通过这样的考虑,我们采用了符号的想法,其中只有梯度的迹象被交换。此外,大多数现有作品都假设在移动设备和参数服务器上都可以使用通道状态信息(CSI),因此移动设备可以采用频道容量决定的固定传输速率。在这项工作中,仅假定参数服务器端CSI,并且考虑使用中断的通道容量。在这种情况下,移动设备的基本问题是选择适当的本地处理和通信参数(包括传输速率),以在整体学习绩效与能源消耗之间达到所需的平衡。制定和解决了两个优化问题,这些问题可以优化鉴于能耗要求的学习绩效,反之亦然。此外,考虑到数据可以以FL的高度不平衡方式分布在移动设备上,因此提出了基于随机标志的算法。进行广泛的模拟以证明所提出的方法的有效性。
In federated learning (FL), reducing the communication overhead is one of the most critical challenges since the parameter server and the mobile devices share the training parameters over wireless links. With such consideration, we adopt the idea of SignSGD in which only the signs of the gradients are exchanged. Moreover, most of the existing works assume Channel State Information (CSI) available at both the mobile devices and the parameter server, and thus the mobile devices can adopt fixed transmission rates dictated by the channel capacity. In this work, only the parameter server side CSI is assumed, and channel capacity with outage is considered. In this case, an essential problem for the mobile devices is to select appropriate local processing and communication parameters (including the transmission rates) to achieve a desired balance between the overall learning performance and their energy consumption. Two optimization problems are formulated and solved, which optimize the learning performance given the energy consumption requirement, and vice versa. Furthermore, considering that the data may be distributed across the mobile devices in a highly uneven fashion in FL, a stochastic sign-based algorithm is proposed. Extensive simulations are performed to demonstrate the effectiveness of the proposed methods.