A framework redefines visualization components for random variable inputs to obey the continuous mapping theorem and is implemented in the ggdibbler ggplot2 extension.
Edzer Pebesma and Roger Bivand.Spatial Data Science: With applications in R
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Mixture of spatio-temporal covariance models with dynamic advection effects enables changing wind directions for non-stationary rainfall, estimated via MCMC and demonstrated on Brazilian data.
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