Communication networks are important infrastructures in contemporary society. There are still many challenges that are not fully solved and new solutions are proposed continuously in this active research area. In recent years, to model the network topology, graph-based deep learning has achieved the state-of-the-art performance in a series of problems in communication networks. In this survey, we review the rapidly growing body of research using different graph-based deep learning models, e.g. graph convolutional and graph attention networks, in various problems from different types of communication networks, e.g. wireless networks, wired networks, and software defined networks. We also present a well-organized list of the problem and solution for each study and identify future research directions. To the best of our knowledge, this paper is the first survey that focuses on the application of graph-based deep learning methods in communication networks involving both wired and wireless scenarios. To track the follow-up research, a public GitHub repository is created, where the relevant papers will be updated continuously.
翻译:通信网络是当代社会的重要基础设施,仍然存在许多尚未完全解决的挑战,在这一积极研究领域不断提出新的解决办法。近年来,为了模拟网络地形学,基于图表的深层次学习在通信网络的一系列问题中取得了最新业绩。在这项调查中,我们利用不同基于图表的深层次学习模型,例如图集、图集和图集关注网络,对不同类型通信网络的各种问题,例如无线网络、有线网络和软件界定的网络,进行了快速增长的研究。我们还为每项研究提供了一份组织完善的问题和解决办法清单,并确定了今后的研究方向。我们最了解的是,本文件是第一次侧重于在涉及有线和无线情景的通信网络中应用基于图表的深层次学习方法的调查。为了跟踪后续研究,建立了一个公共GitHub存储库,将不断更新相关文件。