DataSheet1_Forecasting infections with spatio-temporal graph neural networks: a case study of the Dutch SARS-CoV-2 spread.pdf

The spread of an epidemic over a population is influenced by a multitude of factors having both spatial and temporal nature, which are hard to completely capture using first principle methods. This paper concerns regional forecasting of SARS-Cov-2 infections 1 week ahead using machine learning. We especially focus on the Dutch case study for which we develop a municipality-level COVID-19 dataset. We propose to use a novel spatiotemporal graph neural network architecture to perform the predictions. The developed model captures the spread of infectious diseases within municipalities over time us... Mehr ...

Verfasser: V. Maxime Croft
Senna C. J. L. van Iersel
Cosimo Della Santina
Dokumenttyp: Dataset
Erscheinungsdatum: 2023
Schlagwörter: Biophysics / Astrophysics / Applied Physics / Computational Physics / Condensed Matter Physics / Particle Physics / Plasma Physics / Solar System / Solar Physics / Planets and Exoplanets / Classical and Physical Optics / Photonics / Optoelectronics and Optical Communications / Cloud Physics / Tropospheric and Stratospheric Physics / High Energy Astrophysics / Cosmic Rays / Mesospheric / Ionospheric and Magnetospheric Physics / Space and Solar Physics / Mathematical Physics not elsewhere classified / Physical Chemistry of Materials / Physical Chemistry not elsewhere classified / Classical Physics not elsewhere classified / Condensed Matter Physics not elsewhere classified / Quantum Physics not elsewhere classified / epidemic prediction / deep learning / spatio-temporal graph neural networks / real world evidence / COVID-19
Sprache: unknown
Permalink: https://search.fid-benelux.de/Record/base-27451824
Datenquelle: BASE; Originalkatalog
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Link(s) : https://doi.org/10.3389/fphy.2023.1277052.s001