As an efficient graph analytical tool, graph neural networks (GNNs) have special properties that are particularly fit for the characteristics and requirements of wireless communications, exhibiting good potential for the advancement of next-generation wireless communications. This article aims to provide a comprehensive overview of the interplay between GNNs and wireless communications, including GNNs for wireless communications (GNN4Com) and wireless communications for GNNs (Com4GNN). In particular, we discuss GNN4Com based on how graphical models are constructed and introduce Com4GNN with corresponding incentives. We also highlight potential research directions to promote future research endeavors for GNNs in wireless communications.
翻译:作为高效的图表分析工具,图形神经网络具有特别的特性,特别适合无线通信的特点和要求,对下一代无线通信的发展具有良好潜力,本篇文章旨在全面概述全球无线通信与无线通信之间的相互作用,包括无线通信全球无线通信网络和无线通信全球无线通信网络。特别是,我们根据图形模型的构建方式讨论GN4Com,并采用相应的激励措施介绍Com4GNN。我们还强调了促进无线通信全球无线网络今后研究工作的潜在研究方向。