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Hello! I have a spatio-temporal dataset where each snapshot in time is evaluated on a 13 X 13 regular spatial grid and the number of (irregularly spaced) time observations is very large (>100k). I want to assume Kronecker structure for the covariance of the form
K = k_space(x, x') kron k_time(t, t')
where k_time is non-stationary. For now, I'm trying to get a simpler model to work usingGridInterpolationKernel
for the time covariance but I'm running into shape issues and I'm not sure how to proceed.The code looks like this:
where
train_x
has shape[Ntotal, 3]
andtrain_y
has shape[Ntotal]
withNtotal = Ntime*Nspace
. This seems closely related to #319 but I still wasn't able to get it to work. Any help would be appreciated!Beta Was this translation helpful? Give feedback.
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