English

FLEXIBLE: Forecasting Cellular Traffic by Leveraging Explicit Inductive Graph-Based Learning

Machine Learning 2024-05-16 v1 Artificial Intelligence Networking and Internet Architecture

Abstract

From a telecommunication standpoint, the surge in users and services challenges next-generation networks with escalating traffic demands and limited resources. Accurate traffic prediction can offer network operators valuable insights into network conditions and suggest optimal allocation policies. Recently, spatio-temporal forecasting, employing Graph Neural Networks (GNNs), has emerged as a promising method for cellular traffic prediction. However, existing studies, inspired by road traffic forecasting formulations, overlook the dynamic deployment and removal of base stations, requiring the GNN-based forecaster to handle an evolving graph. This work introduces a novel inductive learning scheme and a generalizable GNN-based forecasting model that can process diverse graphs of cellular traffic with one-time training. We also demonstrate that this model can be easily leveraged by transfer learning with minimal effort, making it applicable to different areas. Experimental results show up to 9.8% performance improvement compared to the state-of-the-art, especially in rare-data settings with training data reduced to below 20%.

Keywords

Cite

@article{arxiv.2405.08843,
  title  = {FLEXIBLE: Forecasting Cellular Traffic by Leveraging Explicit Inductive Graph-Based Learning},
  author = {Duc Thinh Ngo and Kandaraj Piamrat and Ons Aouedi and Thomas Hassan and Philippe Raipin-Parvédy},
  journal= {arXiv preprint arXiv:2405.08843},
  year   = {2024}
}
R2 v1 2026-06-28T16:27:23.450Z