- fselector
(FSelector)
Optimization algorithm.
- task
(mlr3::Task)
Task to operate on.
- learner
(mlr3::Learner)
Learner to optimize the feature subset for.
- inner_resampling
(mlr3::Resampling)
Resampling used for the inner loop.
- outer_resampling
mlr3::Resampling)
Resampling used for the outer loop.
- measure
(mlr3::Measure)
Measure to optimize. If NULL, default measure is used.
- term_evals
(integer(1))
Number of allowed evaluations.
Ignored if terminator is passed.
- term_time
(integer(1))
Maximum allowed time in seconds.
Ignored if terminator is passed.
- terminator
(Terminator)
Stop criterion of the feature selection.
- store_fselect_instance
(logical(1))
If TRUE (default), stores the internally created FSelectInstanceSingleCrit with all intermediate results in slot $fselect_instance.
Is set to TRUE, if store_models = TRUE
- store_benchmark_result
(logical(1))
Store benchmark result in archive?
- store_models
(logical(1)).
Store models in benchmark result?
- check_values
(logical(1))
Check the parameters before the evaluation and the results for
validity?
- callbacks
(list of CallbackFSelect)
List of callbacks.
- ties_method
(character(1))
The method to break ties when selecting sets while optimizing and when selecting the best set.
Can be "least_features" or "random".
The option "least_features" (default) selects the feature set with the least features.
If there are multiple best feature sets with the same number of features, one is selected randomly.
The random method returns a random feature set from the best feature sets.
Ignored if multiple measures are used.