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MSGNet (AAAI2024)

Paper Link:MSGNet: Learning Multi-Scale Inter-Series Correlations for Multivariate Time Series Forecasting

Usage

  • Train and evaluate MSGNet

    • You can use the following command:sh ./scripts/ETTh1.sh.
  • Train your model

    • Add model file in the folder ./models/your_model.py.
    • Add model in the class Exp_Main.
  • Flight dataset

    • You can obtain the dataset from Google Drive. Then please place it in the folder ./dataset.

Model

MSGNet employs several ScaleGraph blocks, each encompassing three pivotal modules: an FFT module for multi-scale data identification, an adaptive graph convolution module for inter-series correlation learning within a time scale, and a multi-head attention module for intra-series correlation learning.

Main Results

Forecast results with 96 review window and prediction length {96, 192, 336, 720}. The best result is represented in bold, followed by underline.

Citation

@article{cai2023msgnet,
  title={MSGNet: Learning Multi-Scale Inter-Series Correlations for Multivariate Time Series Forecasting},
  author={Cai, Wanlin and Liang, Yuxuan and Liu, Xianggen and Feng, Jianshuai and Wu, Yuankai},
  journal={arXiv preprint arXiv:2401.00423},
  year={2023}
}

Acknowledgement

We appreciate the valuable contributions of the following GitHub.