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HiSTM: Hierarchical Spatiotemporal Mamba for Cellular Traffic Forecasting

Published: August 7, 2025 | arXiv ID: 2508.09184v1

By: Zineddine Bettouche , Khalid Ali , Andreas Fischer and more

Potential Business Impact:

Predicts phone network traffic better, faster.

Cellular traffic forecasting is essential for network planning, resource allocation, or load-balancing traffic across cells. However, accurate forecasting is difficult due to intricate spatial and temporal patterns that exist due to the mobility of users. Existing AI-based traffic forecasting models often trade-off accuracy and computational efficiency. We present Hierarchical SpatioTemporal Mamba (HiSTM), which combines a dual spatial encoder with a Mamba-based temporal module and attention mechanism. HiSTM employs selective state space methods to capture spatial and temporal patterns in network traffic. In our evaluation, we use a real-world dataset to compare HiSTM against several baselines, showing a 29.4% MAE improvement over the STN baseline while using 94% fewer parameters. We show that the HiSTM generalizes well across different datasets and improves in accuracy over longer time-horizons.

Country of Origin
🇩🇪 Germany

Page Count
7 pages

Category
Computer Science:
Networking and Internet Architecture