Wireless networks are inherently graph-structured, which can be utilized in graph representation learning to solve complex wireless network optimization problems. In graph representation learning, feature vectors for each entity in the network are calculated such that they capture spatial and temporal dependencies in their local and global neighbourhoods. Graph neural networks (GNNs) are powerful tools to solve these complex problems because of their expressive representation and reasoning power. In this paper, the potential of graph representation learning and GNNs in wireless networks is presented. An overview of graph learning is provided which covers the fundamentals and concepts such as feature design over graphs, GNNs, and their design principles. Potential of graph representation learning in wireless networks is presented via few exemplary use cases and some initial results on the GNN-based access point selection for cell-free massive MIMO systems.
翻译:无线网络具有内在的图形结构,可用于图形代表学习,以解决复杂的无线网络优化问题。在图形代表学习中,对网络中每个实体的特质矢量进行计算,以便捕捉其当地和全球居民区的空间和时间依赖性。图形神经网络(GNNs)由于其表达和推理能力,是解决这些复杂问题的有力工具。本文介绍了无线网络中图形代表学习和GNNs的潜力。提供了图表学习概况,涵盖了图面设计、GNNs及其设计原则等基本原理和概念。无线网络中的图形代表学习潜力通过很少的示范使用案例和无细胞大型MIMO系统基于GNN的接入点选择的一些初步结果加以展示。