Builds regression models that predict for the positive class whether a particular example belongs to it (1) or not (-1).
Probabilities are generated by transforming the predictions with a softmax.
Inspired by WEKA's ClassificationViaRegression (http://weka.sourceforge.net/doc.dev/weka/classifiers/meta/ClassificationViaRegression.html).
makeClassificationViaRegressionWrapper(learner,
predict.type = "response")
(Learner | character(1)
)
The learner.
If you pass a string the learner will be created via makeLearner.
(character(1)
)
“response” (= labels) or “prob” (= probabilities and labels by selecting the one with maximal probability).
Other wrapper: makeBaggingWrapper
,
makeConstantClassWrapper
,
makeCostSensClassifWrapper
,
makeCostSensRegrWrapper
,
makeDownsampleWrapper
,
makeDummyFeaturesWrapper
,
makeExtractFDAFeatsWrapper
,
makeFeatSelWrapper
,
makeFilterWrapper
,
makeImputeWrapper
,
makeMulticlassWrapper
,
makeMultilabelBinaryRelevanceWrapper
,
makeMultilabelClassifierChainsWrapper
,
makeMultilabelDBRWrapper
,
makeMultilabelNestedStackingWrapper
,
makeMultilabelStackingWrapper
,
makeOverBaggingWrapper
,
makePreprocWrapperCaret
,
makePreprocWrapper
,
makeRemoveConstantFeaturesWrapper
,
makeSMOTEWrapper
,
makeTuneWrapper
,
makeUndersampleWrapper
,
makeWeightedClassesWrapper
# NOT RUN {
lrn = makeLearner("regr.rpart")
lrn = makeClassificationViaRegressionWrapper(lrn)
mod = train(lrn, sonar.task, subset = 1:140)
predictions = predict(mod, newdata = getTaskData(sonar.task)[141:208, 1:60])
# }
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