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On the Inclusion of Spatial Information for Spatio-Temporal Neural Networks
[article]
2020
arXiv
pre-print
When confronting a spatio-temporal regression, it is sensible to feed the model with any available prior information about the spatial dimension. For example, it is common to define the architecture of neural networks based on spatial closeness, adjacency, or correlation. A common alternative, if spatial information is not available or is too costly to introduce it in the model, is to learn it as an extra step of the model. While the use of prior spatial knowledge, given or learnt, might be
arXiv:2007.07559v2
fatcat:kvoa5xzyjzdxrfrnksiffy5lxe