mlr3 (version 0.5.0)

mlr_resamplings_holdout: Holdout Resampling

Description

Splits data into a training set and a test set. Parameter ratio determines the ratio of observation going into the training set (default: 2/3).

Arguments

Dictionary

This Resampling can be instantiated via the dictionary mlr_resamplings or with the associated sugar function rsmp():

mlr_resamplings$get("holdout")
rsmp("holdout")

Parameters

  • ratio (numeric(1)) Ratio of observations to put into the training set.

Super class

mlr3::Resampling -> ResamplingHoldout

Public fields

iters

(integer(1)) Returns the number of resampling iterations, depending on the values stored in the param_set.

Methods

Public methods

Method new()

Creates a new instance of this R6 class.

Usage

ResamplingHoldout$new()

Method clone()

The objects of this class are cloneable with this method.

Usage

ResamplingHoldout$clone(deep = FALSE)

Arguments

deep

Whether to make a deep clone.

References

mlr3bischl_2012

See Also

Dictionary of Resamplings: mlr_resamplings

as.data.table(mlr_resamplings) for a complete table of all (also dynamically created) Resampling implementations.

Other Resampling: Resampling, mlr_resamplings_bootstrap, mlr_resamplings_custom, mlr_resamplings_cv, mlr_resamplings_insample, mlr_resamplings_loo, mlr_resamplings_repeated_cv, mlr_resamplings_subsampling, mlr_resamplings

Examples

Run this code
# NOT RUN {
# Create a task with 10 observations
task = tsk("iris")
task$filter(1:10)

# Instantiate Resampling
rho = rsmp("holdout", ratio = 0.5)
rho$instantiate(task)

# Individual sets:
rho$train_set(1)
rho$test_set(1)
intersect(rho$train_set(1), rho$test_set(1))

# Internal storage:
rho$instance # simple list
# }

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