Deep Learning Network-Temporal Models For Traffic Prediction
arXiv cs.LG / 3/13/2026
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Key Points
- The paper introduces two deep learning models for multivariate time series in network traffic: a customized network-temporal graph attention network (GAT) and a fine-tuned multi-modal large language model (LLM) with clustering, aiming to learn both temporal patterns and network topology.
- Both models are evaluated against an LSTM baseline on a real-world network dataset, with the LLM-based model achieving superior overall prediction and generalization, while the GAT reduces prediction variance across time series and horizons.
- The study reveals correlation variability and prediction distribution discrepancies over time series and across different prediction horizons.
- The results suggest potential practical benefits for network intelligent control and management by enabling more accurate and robust traffic prediction.
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