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Sparsification and Filtering for Spatial-temporal GNN in Multivariate Time-series

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  • Yuanrong Wang
  • Tomaso Aste

Abstract

We propose an end-to-end architecture for multivariate time-series prediction that integrates a spatial-temporal graph neural network with a matrix filtering module. This module generates filtered (inverse) correlation graphs from multivariate time series before inputting them into a GNN. In contrast with existing sparsification methods adopted in graph neural network, our model explicitly leverage time-series filtering to overcome the low signal-to-noise ratio typical of complex systems data. We present a set of experiments, where we predict future sales from a synthetic time-series sales dataset. The proposed spatial-temporal graph neural network displays superior performances with respect to baseline approaches, with no graphical information, and with fully connected, disconnected graphs and unfiltered graphs.

Suggested Citation

  • Yuanrong Wang & Tomaso Aste, 2022. "Sparsification and Filtering for Spatial-temporal GNN in Multivariate Time-series," Papers 2203.03991, arXiv.org.
  • Handle: RePEc:arx:papers:2203.03991
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    References listed on IDEAS

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    10. Jeremy D. Turiel & Paolo Barucca & Tomaso Aste, 2020. "Simplicial persistence of financial markets: filtering, generative processes and portfolio risk," Papers 2009.08794, arXiv.org.
    11. Antonio Briola & Jeremy Turiel & Riccardo Marcaccioli & Alvaro Cauderan & Tomaso Aste, 2021. "Deep Reinforcement Learning for Active High Frequency Trading," Papers 2101.07107, arXiv.org, revised Aug 2023.
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    Cited by:

    1. David Vidal-Tom'as & Antonio Briola & Tomaso Aste, 2023. "FTX's downfall and Binance's consolidation: The fragility of centralised digital finance," Papers 2302.11371, arXiv.org, revised Dec 2023.
    2. Yuanrong Wang & Yinsen Miao & Alexander CY Wong & Nikita P Granger & Christian Michler, 2023. "Domain-adapted Learning and Interpretability: DRL for Gas Trading," Papers 2301.08359, arXiv.org, revised Sep 2023.
    3. Yuanrong Wang & Vignesh Raja Swaminathan & Nikita P. Granger & Carlos Ros Perez & Christian Michler, 2023. "Domain-adapted Learning and Imitation: DRL for Power Arbitrage," Papers 2301.08360, arXiv.org, revised Sep 2023.
    4. Antonio Briola & Tomaso Aste, 2022. "Dependency structures in cryptocurrency market from high to low frequency," Papers 2206.03386, arXiv.org, revised Dec 2022.

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