Graph Neural Networks for Next-Generation-IoT: Recent Advances and Open Challenges
Nguyen Xuan Tung, Le Tung Giang, Bui Duc Son, Seon Geun Jeong, Trinh Van Chien, Won Joo Hwang, Lajos Hanzo

TL;DR
This survey explores how Graph Neural Networks can be systematically applied to next-generation IoT systems, addressing challenges like scalability, security, and dynamic optimization as NG-IoT evolves towards 6G.
Contribution
It provides a comprehensive overview of GNN paradigms, their applications in NG-IoT, and offers design guidelines and future research directions for integrating GNNs into complex IoT environments.
Findings
GNNs can enhance scalability and security in NG-IoT.
GNNs effectively model dynamic, constrained graphs in IoT networks.
Integration of GNNs with emerging technologies improves distributed intelligence.
Abstract
Graph Neural Networks (GNNs) have emerged as a powerful framework for modeling complex interconnected systems, hence making them particularly well-suited to address the growing challenges of next-generation Internet of Things (NG-IoT) networks. Existing studies remain fragmented, and there is a lack of comprehensive guidance on how GNNs can be systematically applied to NG-IoT systems. As NG-IoT systems evolve toward 6G, they incorporate diverse technologies. These advances promise unprecedented connectivity, sensing, and automation but also introduce significant complexity, requiring new approaches for scalable learning, dynamic optimization, and secure, decentralized decision-making. This survey provides a comprehensive and forward-looking exploration of how GNNs can empower NG-IoT environments. We commence by exploring the fundamental paradigms of GNNs and articulating the motivation…
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Taxonomy
TopicsIoT and Edge/Fog Computing · Brain Tumor Detection and Classification · Energy Efficient Wireless Sensor Networks
