MeasureRegr: Regression Measure

MeasureRegrR Documentation

Regression Measure

Description

This measure specializes Measure for regression problems:

  • task_type is set to "regr".

  • Possible values for predict_type are "response", "se" and "distr".

Predefined measures can be found in the dictionary mlr_measures. The default measure for regression is regr.mse.

Super class

mlr3::Measure -> MeasureRegr

Methods

Public methods

Inherited methods

Method new()

Creates a new instance of this R6 class.

Usage
MeasureRegr$new(
  id,
  param_set = ps(),
  range,
  minimize = NA,
  average = "macro",
  aggregator = NULL,
  properties = character(),
  predict_type = "response",
  predict_sets = "test",
  task_properties = character(),
  packages = character(),
  label = NA_character_,
  man = NA_character_
)
Arguments
id

(character(1))
Identifier for the new instance.

param_set

(paradox::ParamSet)
Set of hyperparameters.

range

(numeric(2))
Feasible range for this measure as c(lower_bound, upper_bound). Both bounds may be infinite.

minimize

(logical(1))
Set to TRUE if good predictions correspond to small values, and to FALSE if good predictions correspond to large values. If set to NA (default), tuning this measure is not possible.

average

(character(1))
How to average multiple Predictions from a ResampleResult.

The default, "macro", calculates the individual performances scores for each Prediction and then uses the function defined in ⁠$aggregator⁠ to average them to a single number.

If set to "micro", the individual Prediction objects are first combined into a single new Prediction object which is then used to assess the performance. The function in ⁠$aggregator⁠ is not used in this case.

aggregator

(⁠function()⁠)
Function to aggregate over multiple iterations. The role of this function depends on the value of field "average":

  • "macro": A numeric vector of scores (one per iteration) is passed. The aggregate function defaults to mean() in this case.

  • "micro": The aggregator function is not used. Instead, predictions from multiple iterations are first combined and then scored in one go.

  • "custom": A ResampleResult is passed to the aggregate function.

properties

(character())
Properties of the measure. Must be a subset of mlr_reflections$measure_properties. Supported by mlr3:

  • "requires_task" (requires the complete Task),

  • "requires_learner" (requires the trained Learner),

  • "requires_model" (requires the trained Learner, including the fitted model),

  • "requires_train_set" (requires the training indices from the Resampling), and

  • "na_score" (the measure is expected to occasionally return NA or NaN).

predict_type

(character(1))
Required predict type of the Learner. Possible values are stored in mlr_reflections$learner_predict_types.

predict_sets

(character())
Prediction sets to operate on, used in aggregate() to extract the matching predict_sets from the ResampleResult. Multiple predict sets are calculated by the respective Learner during resample()/benchmark(). Must be a non-empty subset of ⁠{"train", "test", "holdout"}⁠. If multiple sets are provided, these are first combined to a single prediction object. Default is "test".

task_properties

(character())
Required task properties, see Task.

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()⁠.


Method clone()

The objects of this class are cloneable with this method.

Usage
MeasureRegr$clone(deep = FALSE)
Arguments
deep

Whether to make a deep clone.

See Also

Other Measure: MeasureClassif, MeasureSimilarity, Measure, mlr_measures_aic, mlr_measures_bic, mlr_measures_classif.costs, mlr_measures_debug_classif, mlr_measures_elapsed_time, mlr_measures_oob_error, mlr_measures_selected_features, mlr_measures


mlr3 documentation built on Nov. 17, 2023, 5:07 p.m.