convoSPAT: Convolution-Based Nonstationary Spatial Modeling (original) (raw)

Fits convolution-based nonstationary Gaussian process models to point-referenced spatial data. The nonstationary covariance function allows the user to specify the underlying correlation structure and which spatial dependence parameters should be allowed to vary over space: the anisotropy, nugget variance, and process variance. The parameters are estimated via maximum likelihood, using a local likelihood approach. Also provided are functions to fit stationary spatial models for comparison, calculate the Kriging predictor and standard errors, and create various plots to visualize nonstationarity.

Version: 1.2.7
Depends: R (≥ 3.1.2)
Imports: stats, graphics, ellipse, fields, MASS, plotrix, StatMatch
Published: 2021-01-16
DOI: 10.32614/CRAN.package.convoSPAT
Author: Mark D. Risser [aut, cre]
Maintainer: Mark D. Risser
License: MIT + file
URL: http://github.com/markdrisser/convoSPAT
NeedsCompilation: no
Citation: convoSPAT citation info
CRAN checks: convoSPAT results

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