This Learner specializes Learner for regression problems:
task_type is set to "regr".
Creates Predictions of class PredictionRegr.
Possible values for predict_types are:
"response": Predicts a numeric response for each observation in the test set.
"se": Predicts the standard error for each value of response for each observation in the test set.
"distr": Probability distribution as VectorDistribution object (requires package distr6, available via
repository https://raphaels1.r-universe.dev).
Predefined learners can be found in the dictionary mlr_learners. Essential regression learners can be found in this dictionary after loading mlr3learners. Additional learners are implement in the Github package https://github.com/mlr-org/mlr3extralearners.
mlr3::Learner -> LearnerRegr
new()Creates a new instance of this R6 class.
LearnerRegr$new(
id,
param_set = ps(),
predict_types = "response",
feature_types = character(),
properties = character(),
data_formats = "data.table",
packages = character(),
label = NA_character_,
man = NA_character_
)id(character(1))
Identifier for the new instance.
param_set(paradox::ParamSet)
Set of hyperparameters.
predict_types(character())
Supported predict types. Must be a subset of mlr_reflections$learner_predict_types.
feature_types(character())
Feature types the learner operates on. Must be a subset of mlr_reflections$task_feature_types.
properties(character())
Set of properties of the Learner.
Must be a subset of mlr_reflections$learner_properties.
The following properties are currently standardized and understood by learners in mlr3:
"missings": The learner can handle missing values in the data.
"weights": The learner supports observation weights.
"importance": The learner supports extraction of importance scores, i.e. comes with an $importance() extractor function (see section on optional extractors in Learner).
"selected_features": The learner supports extraction of the set of selected features, i.e. comes with a $selected_features() extractor function (see section on optional extractors in Learner).
"oob_error": The learner supports extraction of estimated out of bag error, i.e. comes with a oob_error() extractor function (see section on optional extractors in Learner).
"validation": The learner can use a validation task during training.
"internal_tuning": The learner is able to internally optimize hyperparameters (those are also tagged with "internal_tuning").
"marshal": To save learners with this property, you need to call $marshal() first.
If a learner is in a marshaled state, you call first need to call $unmarshal() to use its model, e.g. for prediction.
data_formats(character())
Set of supported data formats which can be processed during $train() and $predict(),
e.g. "data.table".
packages(character())
Set of required packages.
A warning is signaled by the constructor if at least one of the packages is not installed,
but loaded (not attached) later on-demand via requireNamespace().
label(character(1))
Label for the new instance.
man(character(1))
String in the format [pkg]::[topic] pointing to a manual page for this object.
The referenced help package can be opened via method $help().
clone()The objects of this class are cloneable with this method.
LearnerRegr$clone(deep = FALSE)deepWhether to make a deep clone.
Chapter in the mlr3book: https://mlr3book.mlr-org.com/chapters/chapter2/data_and_basic_modeling.html#sec-learners
Package mlr3learners for a solid collection of essential learners.
Package mlr3extralearners for more learners.
Dictionary of Learners: mlr_learners
as.data.table(mlr_learners) for a table of available Learners in the running session (depending on the loaded packages).
mlr3pipelines to combine learners with pre- and postprocessing steps.
Package mlr3viz for some generic visualizations.
Extension packages for additional task types:
mlr3proba for probabilistic supervised regression and survival analysis.
mlr3cluster for unsupervised clustering.
mlr3tuning for tuning of hyperparameters, mlr3tuningspaces for established default tuning spaces.
Other Learner:
Learner,
LearnerClassif,
mlr_learners,
mlr_learners_classif.debug,
mlr_learners_classif.featureless,
mlr_learners_classif.rpart,
mlr_learners_regr.debug,
mlr_learners_regr.featureless,
mlr_learners_regr.rpart
# get all regression learners from mlr_learners:
lrns = mlr_learners$mget(mlr_learners$keys("^regr"))
names(lrns)
# get a specific learner from mlr_learners:
mlr_learners$get("regr.rpart")
lrn("classif.featureless")
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