Hierarchical Bidirectional State-Space Graph Fusion Network for Long-Horizon Network Traffic Forecastings
Authors/Creators
- 1. SRM Institute of Science and Technology, Tiruchirappalli, Tamilnadu, India
Description
HB-SSGFN is a unified deep learning framework for scalable long-horizon network traffic forecasting that combines four components—a Hierarchical Selective State-Space Encoder for multi-resolution temporal patterns, a Bidirectional Graph Propagation Block for both downstream congestion diffusion and upstream TCP feedback, a Bilinear Spatiotemporal Fusion layer using multiplicative cross-modal interactions, and a Stability-Aware Multi-step Decoder that constrains the spectral norm to curb long-horizon error amplification—achieving linear computational complexity while outperforming eight competitive baselines on three real-world backbone datasets, with MAE reductions of 17.3% over Graph WaveNet and 13.6% over Mamba-SSM at a 12-step horizon (p<0.01).
Files
HB-SSGFN_source_code.zip
Files
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