(list), with the options for the model building procedure:
startTheta
optional start value for theta optimization, default is NULL
algTheta
algorithm used to find theta, default is optimDE
.
budgetAlgTheta
budget for the above mentioned algorithm, default is 200
. The value will be multiplied with the length of the model parameter vector to be optimized.
nugget
Value for nugget. Default is -1, which means the nugget will be optimized during MLE. Else it can be fixed in a range between 0 and 1.
regr
Regression function to be used: regpoly0
(default), regpoly1
, regpoly2
. Can be a custom user function.
corr
Correlation function to be used: corrnoisykriging
(default), corrkriging
, corrnoisygauss
, corrgauss
, correxp
, correxpg
, corrlin
, corrcubic
,corrspherical
,corrspline
. Can also be user supplied (if in the right form).
target
target values of the prediction, a vector of strings. Each string specifies a value to be predicted, e.g., "y" for mean, "s" for standard deviation, "ei" for expected improvement. See also predict.kriging
.
This can also be changed after the model has been build, by manipulating the respective object$target
value.