论文标题
通过SGD通过无线D2D网络通过SGD分散的联邦学习
Decentralized Federated Learning via SGD over Wireless D2D Networks
论文作者
论文摘要
联合学习(FL)是一种在网络边缘快速智能获取的新兴范式,可以通过有限的本地数据披露,可以超越分布式数据集和计算资源来对机器学习模型进行联合培训。由于边缘设备之间交换了大量的模型信息,通信是大规模FL的关键推动力。在本文中,我们考虑了一个无线设备网络,该网络共享了用于部署FL的常见无线渠道。每个设备都有一个通常不同的训练集,并且通信通常以设备对设备(D2D)方式进行。在理想情况下,通信范围内的所有设备都可以同时且无声地进行通信,该标准协议可以保证在凸性和连通性假设下融合到全球经验风险最小化问题的最佳解决方案是分散的随机梯度下降(DSGD)。 DSGD将本地SGD步骤与需要在相邻设备之间进行通信的定期共识平均值集成在一起。在本文中,提出了无线协议,该协议通过考虑路径损失,褪色,堵塞和相互干扰的存在来实现DSGD。所提出的协议基于图形着色,用于调度以及物理层处的数字和模拟传输策略,后者利用基于稀疏的恢复利用了空中计算。
Federated Learning (FL), an emerging paradigm for fast intelligent acquisition at the network edge, enables joint training of a machine learning model over distributed data sets and computing resources with limited disclosure of local data. Communication is a critical enabler of large-scale FL due to significant amount of model information exchanged among edge devices. In this paper, we consider a network of wireless devices sharing a common fading wireless channel for the deployment of FL. Each device holds a generally distinct training set, and communication typically takes place in a Device-to-Device (D2D) manner. In the ideal case in which all devices within communication range can communicate simultaneously and noiselessly, a standard protocol that is guaranteed to converge to an optimal solution of the global empirical risk minimization problem under convexity and connectivity assumptions is Decentralized Stochastic Gradient Descent (DSGD). DSGD integrates local SGD steps with periodic consensus averages that require communication between neighboring devices. In this paper, wireless protocols are proposed that implement DSGD by accounting for the presence of path loss, fading, blockages, and mutual interference. The proposed protocols are based on graph coloring for scheduling and on both digital and analog transmission strategies at the physical layer, with the latter leveraging over-the-air computing via sparsity-based recovery.