We propose a new class of trans-Gaussian random fields named Tukey g-and-h
(TGH) random fields to model non-Gaussian spatial data. The proposed TGH
random fields have extremely flexible marginal distributions, possibly
skewed and/or heavy-tailed, and, therefore, have a wide range of
applications. The special formulation of the TGH random field enables an
automatic search for the most suitable transformation for the dataset of
interest while estimating model parameters. An efficient estimation
procedure, based on maximum approximated likelihood, is proposed and an
extreme spatial outlier detection algorithm is formulated. The
probabilistic properties of the TGH random fields, such as second-order
moments, are investigated. Kriging and probabilistic prediction with TGH
random fields are developed along with prediction confidence intervals. The
predictive performance of TGH random fields is demonstrated through
extensive simulation studies and an application to a dataset of total
precipitation in the south east of the United States.
Joint work with Ganggang Xu.
Marc G. Genton
Location
Rennes
Date and time
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Workshop - Spatial Statistics and Image Analysis in Biology