This object wraps the predictions returned by a learner of class LearnerRegr, i.e.
the predicted response and standard error.
Additionally, probability distributions implemented in package distr6 are supported.
mlr3::Prediction -> PredictionRegr
response(numeric())
Access the stored predicted response.
se(numeric())
Access the stored standard error.
quantiles(matrix())
Matrix of predicted quantiles. Observations are in rows, quantile (in ascending order) in columns.
distr(VectorDistribution)
Access the stored vector distribution.
Requires package distr6(in repository https://raphaels1.r-universe.dev) .
new()Creates a new instance of this R6 class.
PredictionRegr$new(
task = NULL,
row_ids = task$row_ids,
truth = task$truth(),
response = NULL,
se = NULL,
quantiles = NULL,
distr = NULL,
weights = NULL,
check = TRUE
)task(TaskRegr)
Task, used to extract defaults for row_ids and truth.
row_ids(integer())
Row ids of the predicted observations, i.e. the row ids of the test set.
truth(numeric())
True (observed) response.
response(numeric())
Vector of numeric response values.
One element for each observation in the test set.
se(numeric())
Numeric vector of predicted standard errors.
One element for each observation in the test set.
quantiles(matrix())
Numeric matrix of predicted quantiles. One row per observation, one column per quantile.
distr(VectorDistribution)
VectorDistribution from package distr6 (in repository https://raphaels1.r-universe.dev).
Each individual distribution in the vector represents the random variable 'survival time'
for an individual observation.
weights(numeric())
Vector of measure weights for each observation. Should be constructed from
the Task's weights_measure column.
check(logical(1))
If TRUE, performs some argument checks and predict type conversions.
clone()The objects of this class are cloneable with this method.
PredictionRegr$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
Package mlr3viz for some generic visualizations.
Extension packages for additional task types:
mlr3proba for probabilistic supervised regression and survival analysis.
mlr3cluster for unsupervised clustering.
Other Prediction:
Prediction,
PredictionClassif
task = tsk("california_housing")
learner = lrn("regr.featureless", predict_type = "se")
p = learner$train(task)$predict(task)
p$predict_types
head(as.data.table(p))
Run the code above in your browser using DataLab