--- tags: - traffic-forecasting - time-series - graph-neural-network - stgformer_final datasets: - metr-la --- # Spatial-Temporal Graph Transformer (Final) - METR-LA Spatial-Temporal Graph Transformer (Final) (STGFORMER_FINAL) trained on METR-LA dataset for traffic speed forecasting. ## Model Description STGFormer Chebyshev+TCN with Xavier initialization, DOW embeddings, exclude_missing_from_norm, and sparsity_k=16 [FINAL - 100 epochs] ## Dataset **METR-LA**: Traffic speed data from highway sensors. ## Usage ```python from utils.stgformer import load_from_hub # Load model from Hub model, scaler = load_from_hub("METR-LA", hf_repo_prefix="STGFORMER_FINAL") # Get predictions from utils.stgformer import get_predictions predictions = get_predictions(model, scaler, test_dataset) ``` ## Training Model was trained using the STGFORMER_FINAL implementation with default hyperparameters. ## Citation If you use this model, please cite the original STGFORMER_FINAL paper: ```bibtex @inproceedings{lan2022stgformer, title={STGformer: Spatial-Temporal Graph Transformer for Traffic Forecasting}, author={Lan, Shengnan and Ma, Yong and Huang, Weijia and Wang, Wanwei and Yang, Hui and Li, Peng}, booktitle={IEEE Transactions on Neural Networks and Learning Systems}, year={2022} } ``` ## License This model checkpoint is released under the same license as the training code.