论文标题
部分可观测时空混沌系统的无模型预测
Representation Learning of Knowledge Graph for Wireless Communication Networks
论文作者
论文摘要
随着第五代无线通信技术的应用,正在使用更多的智能终端并生成大量数据,这促使人们对如何处理和利用这些无线数据进行了广泛的研究。目前,研究人员专注于有关上层应用程序数据的研究或研究基于蒙特卡洛模拟产生的大量数据的特定问题的智能传输方法。本文旨在通过根据无线通信协议构建知识图以及领域专家知识并进一步研究无线内源性智能来了解无线数据的内生关系。我们首先构建了通过5G/B5G测试网络收集的无线核心网络数据的内源性因素的知识图。然后,基于图形卷积神经网络的新型模型旨在学习图表的表示,该图表用于对图形节点进行分类和模拟关系预测。提出的模型实现了自动节点分类和网络异常引起的跟踪。它也以无监督的方式应用于公共数据集。最后,结果表明,所提出的模型的分类精度比现有的无监督图神经网络模型(例如VGAE和ARVGE)更好。
With the application of the fifth-generation wireless communication technologies, more smart terminals are being used and generating huge amounts of data, which has prompted extensive research on how to handle and utilize these wireless data. Researchers currently focus on the research on the upper-layer application data or studying the intelligent transmission methods concerning a specific problem based on a large amount of data generated by the Monte Carlo simulations. This article aims to understand the endogenous relationship of wireless data by constructing a knowledge graph according to the wireless communication protocols, and domain expert knowledge and further investigating the wireless endogenous intelligence. We firstly construct a knowledge graph of the endogenous factors of wireless core network data collected via a 5G/B5G testing network. Then, a novel model based on graph convolutional neural networks is designed to learn the representation of the graph, which is used to classify graph nodes and simulate the relation prediction. The proposed model realizes the automatic nodes classification and network anomaly cause tracing. It is also applied to the public datasets in an unsupervised manner. Finally, the results show that the classification accuracy of the proposed model is better than the existing unsupervised graph neural network models, such as VGAE and ARVGE.