mlr (version 2.18.0)

getHyperPars: Get current parameter settings for a learner.

Description

Retrieves the current hyperparameter settings of a learner.

Usage

getHyperPars(learner, for.fun = c("train", "predict", "both"))

Arguments

learner

(Learner) The learner.

for.fun

(character(1)) Restrict the returned settings to hyperparameters corresponding to when the are used (see ParamHelpers::LearnerParam). Must be a subset of: “train”, “predict” or “both”. Default is c("train", "predict", "both").

Value

(list). A named list of values.

Details

This function only shows hyperparameters that differ from the learner default (because mlr changed the default) or if the user set hyperparameters manually during learner creation. If you want to have an overview of all available hyperparameters use getParamSet().

See Also

Other learner: LearnerProperties, getClassWeightParam(), getLearnerId(), getLearnerNote(), getLearnerPackages(), getLearnerParVals(), getLearnerParamSet(), getLearnerPredictType(), getLearnerShortName(), getLearnerType(), getParamSet(), helpLearnerParam(), helpLearner(), makeLearners(), makeLearner(), removeHyperPars(), setHyperPars(), setId(), setLearnerId(), setPredictThreshold(), setPredictType()

Examples

Run this code
# NOT RUN {
getHyperPars(makeLearner("classif.ranger"))

## set learner hyperparameter `mtry` manually
getHyperPars(makeLearner("classif.ranger", mtry = 100))
# }

Run the code above in your browser using DataCamp Workspace