An S4 class containing the output (model) of the
  ksvm Support Vector Machines function
Objects can be created by calls of the form new("ksvm", ...)
  or by calls to the ksvm function.
type:Object of class "character"  containing
      the support vector machine type
      ("C-svc", "nu-svc", "C-bsvc", "spoc-svc",
      "one-svc", "eps-svr", "nu-svr", "eps-bsvr")
param:Object of class "list" containing the
      Support Vector Machine parameters (C, nu, epsilon)
kernelf:Object of class "function" containing
      the kernel function
kpar:Object of class "list" containing the
      kernel function parameters (hyperparameters)
kcall:Object of class "ANY" containing the      ksvm function call
scaling:Object of class "ANY" containing the
      scaling information performed on the data
terms:Object of class "ANY" containing the
      terms representation of the symbolic model used (when using a formula)
xmatrix:Object of class "input" ("list"
      for multiclass problems 
      or "matrix" for binary classification and regression
      problems) containing the support vectors calculated from
      the data matrix used during computations (possibly scaled and
      without NA). In the case of multi-class classification each list
      entry contains the support vectors from each binary classification
    problem from the one-against-one method.
ymatrix:Object of class "output"
      the response "matrix" or "factor" or "vector" or
      "logical"
fitted:Object of class "output" with the fitted values,
      predictions using the training set.
lev:Object of class "vector" with the levels of the
      response (in the case of classification)
prob.model:Object of class "list" with the
      class prob. model
prior:Object of class "list" with the
      prior of the training set
nclass:Object of class "numeric"  containing
      the number of classes (in the case of classification)
alpha:Object of class "listI" containing the
      resulting alpha vector ("list" or "matrix" in case of multiclass classification) (support vectors)
coef:Object of class "ANY" containing the
      resulting coefficients
alphaindex:Object of class "list" containing
b:Object of class "numeric" containing the
      resulting offset
SVindex:Object of class "vector" containing
      the indexes of the support vectors
nSV:Object of class "numeric" containing the
      number of support vectors
obj:Object of class vector containing the value of the objective function. When using 
      one-against-one in multiclass classification this is a vector.
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 for NA
signature(object = "ksvm"): return the indexes
    of support vectors
signature(object = "ksvm"): returns the complete
5    alpha vector (wit zero values)
signature(object = "ksvm"): returns the
      indexes of non-zero alphas (support vectors)
signature(object = "ksvm"): returns the
      cross-validation error
signature(object = "ksvm"): returns the training
      error
signature(object = "ksvm"): returns the value of the objective function
signature(object = "vm"): returns the fitted
      values (predict on training set)
signature(object = "ksvm"): returns the kernel
    function
signature(object = "ksvm"): returns the kernel
      parameters (hyperparameters)
signature(object = "ksvm"): returns the levels in
      case of classification
signature(object="ksvm"): returns class
      prob. model values
signature(object="ksvm"): returns 
      the parameters of the SVM in a list (C, epsilon, nu etc.)
signature(object="ksvm"): returns 
      the prior of the training set
signature(object="ksvm"): returns the
    ksvm function call
signature(object = "ksvm"): returns the
      scaling values
signature(object = "ksvm"): prints the object information
signature(object = "ksvm"): returns the problem type
signature(object = "ksvm"): returns the data
      matrix used
signature(object = "ksvm"): returns the
      response vector
# NOT RUN {
## simple example using the promotergene data set
data(promotergene)
## train a support vector machine
gene <- ksvm(Class~.,data=promotergene,kernel="rbfdot",
             kpar=list(sigma=0.015),C=50,cross=4)
gene
# the kernel  function
kernelf(gene)
# the alpha values
alpha(gene)
# the coefficients
coef(gene)
# the fitted values
fitted(gene)
# the cross validation error
cross(gene)
# }
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