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TimeGNN: Temporal Dynamic Graph Learning for Time Series Forecasting

  • KTH Royal Institute of Technology

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Résumé

Time series forecasting lies at the core of important real-world applications in many fields of science and engineering. The abundance of large time series datasets that consist of complex patterns and long-term dependencies has led to the development of various neural network architectures. Graph neural network approaches, which jointly learn a graph structure based on the correlation of raw values of multivariate time series while forecasting, have recently seen great success. However, such solutions are often costly to train and difficult to scale. In this paper, we propose TimeGNN, a method that learns dynamic temporal graph representations that can capture the evolution of inter-series patterns along with the correlations of multiple series. TimeGNN achieves inference times 4 to 80 times faster than other state-of-the-art graph-based methods while achieving comparable forecasting performance.

langue originaleAnglais
titreComplex Networks and Their Applications XII - Proceedings of The 12th International Conference on Complex Networks and their Applications
Sous-titreCOMPLEX NETWORKS 2023 Volume 1
rédacteurs en chefHocine Cherifi, Luis M. Rocha, Chantal Cherifi, Murat Donduran
EditeurSpringer Science and Business Media Deutschland GmbH
Pages87-99
Nombre de pages13
ISBN (imprimé)9783031534676
Les DOIs
étatPublié - 1 janv. 2024
Evénement12th International Conference on Complex Networks and their Applications, COMPLEX NETWORKS 2023 - Menton, France
Durée: 28 nov. 202330 nov. 2023

Série de publications

NomStudies in Computational Intelligence
Volume1141 SCI
ISSN (imprimé)1860-949X
ISSN (Electronique)1860-9503

Une conférence

Une conférence12th International Conference on Complex Networks and their Applications, COMPLEX NETWORKS 2023
Pays/TerritoireFrance
La villeMenton
période28/11/2330/11/23

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