Papers
Topics
Authors
Recent
Search
2000 character limit reached

Graph Neural Networks for Wireless Networks: Graph Representation, Architecture and Evaluation

Published 18 Apr 2024 in eess.SP | (2404.11858v2)

Abstract: Graph neural networks (GNNs) have been regarded as the basic model to facilitate deep learning (DL) to revolutionize resource allocation in wireless networks. GNN-based models are shown to be able to learn the structural information about graphs representing the wireless networks to adapt to the time-varying channel state information and dynamics of network topology. This article aims to provide a comprehensive overview of applying GNNs to optimize wireless networks via answering three fundamental questions, i.e., how to input the wireless network data into GNNs, how to improve the performance of GNNs, and how to evaluate GNNs. Particularly, two graph representations are given to transform wireless network parameters into graph-structured data. Then, we focus on the architecture design of the GNN-based models via introducing the basic message passing as well as model improvement methods including multi-head attention mechanism and residual structure. At last, we give task-oriented evaluation metrics for DL-enabled wireless resource allocation. We also highlight certain challenges and potential research directions for the application of GNNs in wireless networks.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (11)
  1. K. B. Letaief, W. Chen, Y. Shi, J. Zhang, and Y. -J. A. Zhang, “The Roadmap to 6G: AI Empowered wireless networks,” IEEE Commun. Mag., vol. 57, no. 8, pp. 84-90, Aug. 2019.
  2. H. Sun, X. Chen, Q. Shi, M. Hong, X. Fu, and N. D. Sidiropoulos, “Learning to optimize: Training deep neural networks for interference management,” IEEE Trans. Signal Process., vol. 66, no. 20, pp. 5438-5453, Oct. 2018.
  3. Y. Shen, J. Zhang, S. H. Song, and K. B. Letaief, “Graph neural networks for wireless communications: From theory to practice,” IEEE Trans. Wireless Commun., vol. 22, no. 5, pp. 3554-3569, May 2023.
  4. M. Lee, G. Yu, H. Dai, and G. Y. Li, “Graph neural networks meet wireless communications: Motivation, applications, and future directions,” IEEE Commun. Mag., vol. 29, no. 5, pp. 12-19, Oct. 2022.
  5. Q. Qi, X. Chen, C. Zhong, C. Yuen, and Z. Zhang, “Deep learning-based design of uplink integrated sensing and communication,” early accessed in IEEE Trans. Wireless Commun.
  6. Y. Li, Y. Lu, B. Ai, Z. Zhong, D. Niyato, and Z. Ding, “GNN-enabled max-min fair beamforming,” early accessed in IEEE Trans. Veh. Technol.
  7. Y. Li, Y. Lu, R. Zhang, B. Ai, and Z. Zhong, “Deep learning for energy efficient beamforming in MU-MISO networks: A GAT-based approach,” IEEE Wireless Commun. Lett., vol. 12, no. 7, pp. 1264-1268, July 2023.
  8. Y. Li, Y. Lu, B. Ai, O. A. Dobre, Z. Ding, and D. Niyato, “GNN-based beamforming for sum-rate maximization in MU-MISO networks,” early accessed in IEEE Trans. Wireless Commun..
  9. Y. Peng, J. Guo, and C. Yang, “Learning resource allocation policy: Vertex-GNN or edge-GNN?” IEEE Trans. Mach. Learn. Commun. Networking, vol. 2, pp. 190-209, 2024.
  10. S. Brody, U. Alon, and E. Yahav, “How attentive are graph attention networks?” in Proc. ICLR, 2022.
  11. D. Chen, Y. Lin, W. Li, P. Li, J. Zhou, and X. Sun, “Measuring and relieving the over-smoothing problem for graph neural networks from the topological view,” in Proc. AAAI, vol. 34, no. 4, pp. 3438-3445, Apr. 2020.
Citations (4)

Summary

No one has generated a summary of this paper yet.

Paper to Video (Beta)

No one has generated a video about this paper yet.

Whiteboard

No one has generated a whiteboard explanation for this paper yet.

Open Problems

We haven't generated a list of open problems mentioned in this paper yet.

Continue Learning

We haven't generated follow-up questions for this paper yet.

Collections

Sign up for free to add this paper to one or more collections.

Tweets

Sign up for free to view the 1 tweet with 0 likes about this paper.