| gausspr-class {kernlab} | R Documentation |
The Gaussian Processes object class
Objects can be created by calls of the form new("gausspr", ...).
or by calling the gausspr function
tol:Object of class "numeric" contains
tolerance of termination criteria
kernelf:Object of class "kfunction" contains
the kernel function used
kpar:Object of class "list" contains the
kernel parameter used
kcall:Object of class "list" contains the used
function call
type:Object of class "character" contains
type of problem
terms:Object of class "ANY" contains the
terms representation of the symbolic model used (when using a formula)
xmatrix:Object of class "input" containing
the data matrix used
ymatrix:Object of class "output" containing the
response matrix
fitted:Object of class "output" containing the
fitted values
lev:Object of class "vector" containing the
levels of the response (in case of classification)
nclass:Object of class "numeric" containing
the number of classes (in case of classification)
alpha:Object of class "listI" containing the
computes alpha values
alphaindexObject of class "list" containing
the indexes for the alphas in various classes (in multi-class
problems).
scalingObject of class "ANY" containing
the scaling coefficients of the data (when case scaled = TRUE is used).
nvar:Object of class "numeric" containing the
computed variance
error:Object of class "numeric" containing the
training error
cross:Object of class "numeric" containing the
cross validation error
n.action:Object of class "ANY" containing the
action performed in NA
signature(object = "gausspr"): returns the alpha
vector
signature(object = "gausspr"): returns the cross
validation error
signature(object = "gausspr"): returns the
training error
signature(object = "vm"): returns the fitted values
signature(object = "gausspr"): returns the call performed
signature(object = "gausspr"): returns the
kernel function used
signature(object = "gausspr"): returns the kernel
parameter used
signature(object = "gausspr"): returns the
response levels (in classification)
signature(object = "gausspr"): returns the type
of problem
signature(object = "gausspr"): returns the
data matrix used
signature(object = "gausspr"): returns the
response matrix used
signature(object = "gausspr"): returns the
scaling coefficients of the data (when scaled = TRUE is used)
Alexandros Karatzoglou
alexandros.karatzoglou@ci.tuwien.ac.at
# train model data(iris) test <- gausspr(Species~.,data=iris,var=2) test alpha(test) error(test) lev(test)