2023
DOI: 10.1007/s41060-023-00452-2
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Graph construction on complex spatiotemporal data for enhancing graph neural network-based approaches

Stefan Bloemheuvel,
Jurgen van den Hoogen,
Martin Atzmueller

Abstract: Graph neural networks (GNNs) haven proven to be an indispensable approach in modeling complex data, in particular spatial temporal data, e.g., relating to sensor data given as time series with according spatial information. Although GNNs provide powerful modeling capabilities on such kind of data, they require adequate input data in terms of both signal and the underlying graph structures. However, typically the according graphs are not automatically available or even predefined, such that typically an ad hoc … Show more

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