This is an R package that provides a single interface for many different Gaussian process modeling software options.
This package was formerly called UGP, for Universal Gaussian processes, but universal has a different meaning in kriging so the name was changed for clarity.
You can install IGP from GitHub with:
# install.packages("devtools")
devtools::install_github("CollinErickson/IGP")
The following shows a simple example using the R package
laGP
as the GP code.
set.seed(0)
library(IGP)
= "laGP"
package <- 20
n <- 1
d <- function(x) {abs(sin(2*pi*x[1]))}
f1 <- matrix(runif(n*d),n,d)
X1 <- apply(X1,1,f1) + rnorm(n, 0, 1e-3)
Z1 <- IGP(package=package,X=X1,Z=Z1)
gp
curve(sapply(x, f1), ylab='y')
curve(gp$predict(matrix(x, ncol=1)) - 2 * gp$predict.se(matrix(x, ncol=1)), col=3, add=T)
curve(gp$predict(matrix(x, ncol=1)) + 2 * gp$predict.se(matrix(x, ncol=1)), col=3, add=T)
curve(gp$predict(matrix(x, ncol=1)), col=2, add=T)
points(X1, Z1, pch=19)
Below is the exact same thing except using the R package
GauPro
. The predictions made are indistinguishable, meaning
that they have fit approximately the same parameter values.
set.seed(0)
= "GauPro"
package <- IGP(package=package,X=X1,Z=Z1)
gp
curve(sapply(x, f1), ylab='y')
curve(gp$predict(matrix(x, ncol=1)) - 2 * gp$predict.se(matrix(x, ncol=1)), col=3, add=T)
curve(gp$predict(matrix(x, ncol=1)) + 2 * gp$predict.se(matrix(x, ncol=1)), col=3, add=T)
curve(gp$predict(matrix(x, ncol=1)), col=2, add=T)
points(X1, Z1, pch=19)
The available packages and the platform they run on are shown below.
The R packages should run easily. The MATLAB packages are called using
the R.matlab
R package and have to open a connection to
MATLAB. Thus you need to have MATLAB on your computer, it will be slow,
and is likely to have problems. Currently the MATLAB packages are not
included in the CRAN version of the package, but they can be found on
the GitHub repository. The Python packages are called using the R
package Python.In.R
. It will open a connection to Python
and probably will be slow. In addition to requiring that you already
have the package (GPy or sklearn) installed, and must be accessible
through your default Python path.
Package | Platform |
---|---|
DiceKriging | R |
GauPro | R |
GPfit | R |
laGP | R |
mlegp | R |
tgp | R |
DACE (GitHub only) | MATLAB |
GPML (GitHub only) | MATLAB |
GPy | Python |
sklearn | Python |