matern15_scaledim: Matern covariance function, smoothess = 1.5, different range...

View source: R/RcppExports.R

matern15_scaledimR Documentation

Matern covariance function, smoothess = 1.5, different range parameter for each dimension

Description

From a matrix of locations and covariance parameters of the form (variance, range_1, ..., range_d, nugget), return the square matrix of all pairwise covariances.

Usage

matern15_scaledim(covparms, locs)

d_matern15_scaledim(covparms, locs)

Arguments

covparms

A vector with covariance parameters in the form (variance, range_1, ..., range_d, nugget)

locs

A matrix with n rows and d columns. Each row of locs is a point in R^d.

Value

A matrix with n rows and n columns, with the i,j entry containing the covariance between observations at locs[i,] and locs[j,].

Functions

  • d_matern15_scaledim(): Derivatives with respect to parameters

Parameterization

The covariance parameter vector is (variance, range_1, ..., range_d, nugget). The covariance function is parameterized as

M(x,y) = \sigma^2 (1 + || D^{-1}(x - y) || ) exp( - || D^{-1}(x - y) || )

where D is a diagonal matrix with (range_1, ..., range_d) on the diagonals. The nugget value \sigma^2 \tau^2 is added to the diagonal of the covariance matrix. NOTE: the nugget is \sigma^2 \tau^2 , not \tau^2 .


joeguinness/GpGp documentation built on Feb. 22, 2024, 9:43 a.m.