论文标题

无线MIMO网络中的无线拆分机器学习

Over-the-Air Split Machine Learning in Wireless MIMO Networks

论文作者

Yang, Yuzhi, Zhang, Zhaoyang, Tian, Yuqing, Yang, Zhaohui, Huang, Chongwen, Zhong, Caijun, Wong, Kai-Kit

论文摘要

在拆分机器学习(ML)中,神经网络(NN)的不同分区由不同的计算节点执行,需要大量的通信成本。为了减轻沟通负担,无线计算(OAC)可以同时有效地实施全部或一部分计算。基于提出的系统,引入了无线网络的系统实现,我们提供了问题制定。特别是,我们表明,在任何大小的NN中的层间连接都可以在数学上分解为一组线性的预编码,并通过MIMO通道上的转换组合。因此,每个MIMO链路的接收器处的发射器和组合矩阵以及通道矩阵本身的组合矩阵可以共同用作NN的完全连接层。还引入了对常规NNS的拟议方案的概括。最后,我们将提出的方案扩展到广泛使用的卷积神经网络,并通过全面的模拟在静态和准静态存储通道条件下证明其有效性。在这样的分裂ML系统中,预编码和组合矩阵被视为可训练的参数,而MIMO通道矩阵被视为未知(隐式)参数。

In split machine learning (ML), different partitions of a neural network (NN) are executed by different computing nodes, requiring a large amount of communication cost. To ease communication burden, over-the-air computation (OAC) can efficiently implement all or part of the computation at the same time of communication. Based on the proposed system, the system implementation over wireless network is introduced and we provide the problem formulation. In particular, we show that the inter-layer connection in a NN of any size can be mathematically decomposed into a set of linear precoding and combining transformations over MIMO channels. Therefore, the precoding matrix at the transmitter and the combining matrix at the receiver of each MIMO link, as well as the channel matrix itself, can jointly serve as a fully connected layer of the NN. The generalization of the proposed scheme to the conventional NNs is also introduced. Finally, we extend the proposed scheme to the widely used convolutional neural networks and demonstrate its effectiveness under both the static and quasi-static memory channel conditions with comprehensive simulations. In such a split ML system, the precoding and combining matrices are regarded as trainable parameters, while MIMO channel matrix is regarded as unknown (implicit) parameters.

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