The Internet of Things (IoT) boom has revolutionized almost every corner of people's daily lives: healthcare, home, transportation, manufacturing, supply chain, and so on. With the recent development of sensor and communication technologies, IoT devices including smart wearables, cameras, smartwatches, and autonomous vehicles can accurately measure and perceive their surrounding environment. Continuous sensing generates massive amounts of data and presents challenges for machine learning. Deep learning models (e.g., convolution neural networks and recurrent neural networks) have been extensively employed in solving IoT tasks by learning patterns from multi-modal sensory data. Graph Neural Networks (GNNs), an emerging and fast-growing family of neural network models, can capture complex interactions within sensor topology and have been demonstrated to achieve state-of-the-art results in numerous IoT learning tasks. In this survey, we present a comprehensive review of recent advances in the application of GNNs to the IoT field, including a deep dive analysis of GNN design in various IoT sensing environments, an overarching list of public data and source code from the collected publications, and future research directions. To keep track of newly published works, we collect representative papers and their open-source implementations and create a Github repository at https://github.com/GuiminDong/GNN4IoT.
翻译:随着感官和通信技术的最近发展,包括智能穿戴器、相机、智能观察器和自主车辆在内的IOT装置能够准确测量和感知周围环境。连续遥感产生大量数据,并给机器学习带来挑战。通过从多式感官数据中学习模式,在解决IOT任务时广泛采用了深层次学习模型(例如,神经网络和经常神经网络),从多式感官数据中学习了模式。GoalNet网络(GNNs)是一个新兴和快速增长的神经网络模型,它能够捕捉感官表层学中的复杂互动,并证明它能够在许多IOT学习任务中取得最新成果。在这次调查中,我们全面回顾了GNNS在I科技领域应用的最新进展,包括对各种IOT环境中GNN的深度潜水分析,一个总的公共数据和源码清单,4 收集的出版物、GNUG/SOFD的公开版本,以及未来研究方向。我们收集了GOGOG的公开文件,并收集了GOG的最近出版和数据库。