TuningInstanceMultiCrit | R Documentation |
TuningInstanceMultiCrit
is a deprecated class that is now a wrapper around TuningInstanceBatchMultiCrit.
bbotk::OptimInstance
-> bbotk::OptimInstanceBatch
-> bbotk::OptimInstanceBatchMultiCrit
-> mlr3tuning::TuningInstanceBatchMultiCrit
-> TuningInstanceMultiCrit
new()
Creates a new instance of this R6 class.
TuningInstanceMultiCrit$new( task, learner, resampling, measures, terminator, search_space = NULL, store_benchmark_result = TRUE, store_models = FALSE, check_values = FALSE, callbacks = NULL )
task
(mlr3::Task)
Task to operate on.
learner
(mlr3::Learner)
Learner to tune.
resampling
(mlr3::Resampling)
Resampling that is used to evaluate the performance of the hyperparameter configurations.
Uninstantiated resamplings are instantiated during construction so that all configurations are evaluated on the same data splits.
Already instantiated resamplings are kept unchanged.
Specialized Tuner change the resampling e.g. to evaluate a hyperparameter configuration on different data splits.
This field, however, always returns the resampling passed in construction.
measures
(list of mlr3::Measure)
Measures to optimize.
terminator
(bbotk::Terminator)
Stop criterion of the tuning process.
search_space
(paradox::ParamSet)
Hyperparameter search space. If NULL
(default), the search space is
constructed from the paradox::TuneToken of the learner's parameter set
(learner$param_set).
store_benchmark_result
(logical(1)
)
If TRUE
(default), store resample result of evaluated hyperparameter
configurations in archive as mlr3::BenchmarkResult.
store_models
(logical(1)
)
If TRUE
, fitted models are stored in the benchmark result
(archive$benchmark_result
). If store_benchmark_result = FALSE
, models
are only stored temporarily and not accessible after the tuning. This
combination is needed for measures that require a model.
check_values
(logical(1)
)
If TRUE
, hyperparameter values are checked before evaluation and
performance scores after. If FALSE
(default), values are unchecked but
computational overhead is reduced.
callbacks
(list of mlr3misc::Callback)
List of callbacks.
clone()
The objects of this class are cloneable with this method.
TuningInstanceMultiCrit$clone(deep = FALSE)
deep
Whether to make a deep clone.
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