Graph Neural Networks in Computer Networks: A Survey
Abstract
Traditional methods of analyzing and processing computer networks have difficulty dealing with their rapidly increasing scalability, structure, and traffic complexity due to the rapid development of information technology. Graph neural networks (GNNs), an emerging deep learning technology, adapt to graph-structured data and relationships. They offer new mechanisms and solutions to real-world problems. This paper provides a structured, unified synthesis of current research in this interdisciplinary field. It reviews the basic concepts and models of GNNs, highlights their current state in major computer network management and optimization scenarios, and discusses typical applications, challenges, open issues, and future research directions.
Keywords
Graph neural network, Computer networks, Deep learning, Internet of Things, Industrial Internet of Things
Citation Format:
Ling Xia Liao, Yulan Xu, Xuxia Liang, Han-Chieh Chao, Shubao Pan, "Graph Neural Networks in Computer Networks: A Survey," Journal of Internet Technology, vol. 27, no. 1 , pp. 95-107, Jan. 2026.
Ling Xia Liao, Yulan Xu, Xuxia Liang, Han-Chieh Chao, Shubao Pan, "Graph Neural Networks in Computer Networks: A Survey," Journal of Internet Technology, vol. 27, no. 1 , pp. 95-107, Jan. 2026.
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