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A communication-efficient model of sparse neural network for distributed intelligence

机译:分布式智能的稀疏神经网络的高效通信模型

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In this paper, we propose a communication-efficient model of sparse bidirectional neural network to intelligently process distributed data. The basic idea of the proposal is a modified bidirectional communication between the core and the edge of Internet by model parameters. The formulation and the procedures of the proposal are investigated. In theory, we prove that the proposed neural network is sparse, while a typical neural network is dense. In practice, a tree topology of computer cluster with a core machine and M edge machines is designed to implement the proposal, where M is the number of distributed datasets. The MNIST image database is split into M parts on the edge machines to simulate the distributed datasets from Internet of Things. Simulation shows the communication cost is greatly improved with the same level of accuracy in comparison to the state-of-the-art model. More importantly, it is naturally secure and private to communicate between the core machine and the edge machines through the model parameters, instead of the original data.
机译:在本文中,我们提出了一种通信有效的稀疏双向神经网络模型来智能处理分布式数据。该提案的基本思想是通过模型参数在Internet的核心和边缘之间进行双向修改通信。研究了提案的制定和程序。从理论上讲,我们证明了所提出的神经网络是稀疏的,而典型的神经网络是密集的。实际上,设计了具有核心计算机和M个边缘计算机的计算机集群的树形拓扑来实现该建议,其中M是分布式数据集的数量。 MNIST图像数据库在边缘机器上分为M个部分,以模拟来自物联网的分布式数据集。仿真表明,与最新模型相比,在保持相同准确度的情况下,通信成本得到了极大的改善。更重要的是,通过模型参数(而不是原始数据)在核心计算机和边缘计算机之间进行通信自然是安全和私有的。

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