See predict.threshold in makeLearner and setThreshold.
For complex wrappers only the top-level predict.type is currently set.
setPredictThreshold(learner, predict.threshold)(Learner | character(1))
The learner.
If you pass a string the learner will be created via makeLearner.
(numeric)
Threshold to produce class labels. Has to be a named vector, where names correspond to class labels.
Only for binary classification it can be a single numerical threshold for the positive class.
See setThreshold for details on how it is applied.
Default is NULL which means 0.5 / an equal threshold for each class.
Other predict: asROCRPrediction,
getPredictionProbabilities,
getPredictionResponse,
getPredictionTaskDesc,
predict.WrappedModel,
setPredictType
Other learner: LearnerProperties,
getClassWeightParam,
getHyperPars, getLearnerId,
getLearnerNote,
getLearnerPackages,
getLearnerParVals,
getLearnerParamSet,
getLearnerPredictType,
getLearnerShortName,
getLearnerType, getParamSet,
helpLearnerParam,
helpLearner, makeLearners,
makeLearner, removeHyperPars,
setHyperPars, setId,
setLearnerId, setPredictType