kernlab (version 0.9-24)

rvm-class: Class "rvm"

Description

Relevance Vector Machine Class

Arguments

Objects from the Class

Objects can be created by calls of the form new("rvm", ...). or by calling the rvm function.

Slots

tol:
Object of class "numeric" contains tolerance of termination criteria used.
kernelf:
Object of class "kfunction" contains the kernel function used
kpar:
Object of class "list" contains the hyperparameter used
kcall:
Object of class "call" contains the function call
type:
Object of class "character" contains type of problem
terms:
Object of class "ANY" containing the terms representation of the symbolic model used (when using a formula interface)
xmatrix:
Object of class "matrix" contains the data matrix used during computation
ymatrix:
Object of class "output" contains the response matrix
fitted:
Object of class "output" with the fitted values, (predict on training set).
lev:
Object of class "vector" contains the levels of the response (in classification)
nclass:
Object of class "numeric" contains the number of classes (in classification)
alpha:
Object of class "listI" containing the the resulting alpha vector
coef:
Object of class "ANY" containing the the resulting model parameters
nvar:
Object of class "numeric" containing the calculated variance (in case of regression)
mlike:
Object of class "numeric" containing the computed maximum likelihood
RVindex:
Object of class "vector" containing the indexes of the resulting relevance vectors
nRV:
Object of class "numeric" containing the number of relevance vectors
cross:
Object of class "numeric" containing the resulting cross validation error
error:
Object of class "numeric" containing the training error
n.action:
Object of class "ANY" containing the action performed on NA

Methods

RVindex
signature(object = "rvm"): returns the index of the relevance vectors
alpha
signature(object = "rvm"): returns the resulting alpha vector
cross
signature(object = "rvm"): returns the resulting cross validation error
error
signature(object = "rvm"): returns the training error
fitted
signature(object = "vm"): returns the fitted values
kcall
signature(object = "rvm"): returns the function call
kernelf
signature(object = "rvm"): returns the used kernel function
kpar
signature(object = "rvm"): returns the parameters of the kernel function
lev
signature(object = "rvm"): returns the levels of the response (in classification)
mlike
signature(object = "rvm"): returns the estimated maximum likelihood
nvar
signature(object = "rvm"): returns the calculated variance (in regression)
type
signature(object = "rvm"): returns the type of problem
xmatrix
signature(object = "rvm"): returns the data matrix used during computation
ymatrix
signature(object = "rvm"): returns the used response

See Also

rvm, ksvm-class

Examples

Run this code

# create data
x <- seq(-20,20,0.1)
y <- sin(x)/x + rnorm(401,sd=0.05)

# train relevance vector machine
foo <- rvm(x, y)
foo

alpha(foo)
RVindex(foo)
fitted(foo)
kernelf(foo)
nvar(foo)

## show slots
slotNames(foo)

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