This is a CPOConstructor
to be used to create a
CPO
. It is called like any R function and returns
the created CPO
.
Converts factor columns into columns giving the probability for each target class to have this target, given the column value.
cpoProbEncode( id, export = "export.default", affect.type = NULL, affect.index = integer(0), affect.names = character(0), affect.pattern = NULL, affect.invert = FALSE, affect.pattern.ignore.case = FALSE, affect.pattern.perl = FALSE, affect.pattern.fixed = FALSE )
id | [ |
---|---|
export | [ |
affect.type | [ |
affect.index | [ |
affect.names | [ |
affect.pattern | [ |
affect.invert | [ |
affect.pattern.ignore.case | [ |
affect.pattern.perl | [ |
affect.pattern.fixed | [ |
[CPO
].
The state's $control
slot is a list of matrices for each
factorial data column. Each of these matrices has rows for each of
the data column's levels, and columns for each
of the target factor levels, and gives the empirical marginal conditional
probabilities for each target value given the column value.
This function creates a CPO object, which can be applied to
Task
s, data.frame
s, link{Learner}
s
and other CPO objects using the %>>%
operator.
The parameters of this object can be changed after creation
using the function setHyperPars
. The other
hyper-parameter manipulating functins, getHyperPars
and getParamSet
similarly work as one expects.
If the “id” parameter is given, the hyperparameters will have this id as aprefix; this will, however, not change the parameters of the creator function.
CPOConstructor
CPO constructor functions are called with optional values of parameters, and additional “special” optional values.
The special optional values are the id
parameter, and the affect.*
parameters. The affect.*
parameters
enable the user to control which subset of a given dataset is affected. If no affect.*
parameters are given, all
data features are affected by default.
Other CPOs:
cpoApplyFunRegrTarget()
,
cpoApplyFun()
,
cpoAsNumeric()
,
cpoCache()
,
cpoCbind()
,
cpoCollapseFact()
,
cpoDropConstants()
,
cpoDummyEncode()
,
cpoFilterAnova()
,
cpoFilterCarscore()
,
cpoFilterChiSquared()
,
cpoFilterFeatures()
,
cpoFilterGainRatio()
,
cpoFilterInformationGain()
,
cpoFilterKruskal()
,
cpoFilterLinearCorrelation()
,
cpoFilterMrmr()
,
cpoFilterOneR()
,
cpoFilterPermutationImportance()
,
cpoFilterRankCorrelation()
,
cpoFilterRelief()
,
cpoFilterRfCImportance()
,
cpoFilterRfImportance()
,
cpoFilterRfSRCImportance()
,
cpoFilterRfSRCMinDepth()
,
cpoFilterSymmetricalUncertainty()
,
cpoFilterUnivariate()
,
cpoFilterVariance()
,
cpoFixFactors()
,
cpoIca()
,
cpoImpactEncodeClassif()
,
cpoImpactEncodeRegr()
,
cpoImputeConstant()
,
cpoImputeHist()
,
cpoImputeLearner()
,
cpoImputeMax()
,
cpoImputeMean()
,
cpoImputeMedian()
,
cpoImputeMin()
,
cpoImputeMode()
,
cpoImputeNormal()
,
cpoImputeUniform()
,
cpoImpute()
,
cpoLogTrafoRegr()
,
cpoMakeCols()
,
cpoMissingIndicators()
,
cpoModelMatrix()
,
cpoOversample()
,
cpoPca()
,
cpoQuantileBinNumerics()
,
cpoRegrResiduals()
,
cpoResponseFromSE()
,
cpoSample()
,
cpoScaleMaxAbs()
,
cpoScaleRange()
,
cpoScale()
,
cpoSelect()
,
cpoSmote()
,
cpoSpatialSign()
,
cpoTransformParams()
,
cpoWrap()
,
makeCPOCase()
,
makeCPOMultiplex()