mlr_tuners_cmaes {mlr3tuning} | R Documentation |
Hyperparameter Tuning with Covariance Matrix Adaptation Evolution Strategy
Description
Subclass for Covariance Matrix Adaptation Evolution Strategy (CMA-ES).
Calls adagio::pureCMAES()
from package adagio.
Dictionary
This Tuner can be instantiated with the associated sugar function tnr()
:
tnr("cmaes")
Control Parameters
start_values
character(1)
Createrandom
start values or based oncenter
of search space? In the latter case, it is the center of the parameters before a trafo is applied.
For the meaning of the control parameters, see adagio::pureCMAES()
.
Note that we have removed all control parameters which refer to the termination of the algorithm and where our terminators allow to obtain the same behavior.
Progress Bars
$optimize()
supports progress bars via the package progressr
combined with a bbotk::Terminator. Simply wrap the function in
progressr::with_progress()
to enable them. We recommend to use package
progress as backend; enable with progressr::handlers("progress")
.
Logging
All Tuners use a logger (as implemented in lgr) from package
bbotk.
Use lgr::get_logger("bbotk")
to access and control the logger.
Optimizer
This Tuner is based on bbotk::OptimizerBatchCmaes which can be applied on any black box optimization problem. See also the documentation of bbotk.
Resources
There are several sections about hyperparameter optimization in the mlr3book.
The gallery features a collection of case studies and demos about optimization.
Use the Hyperband optimizer with different budget parameters.
Super classes
mlr3tuning::Tuner
-> mlr3tuning::TunerBatch
-> mlr3tuning::TunerBatchFromOptimizerBatch
-> TunerBatchCmaes
Methods
Public methods
Inherited methods
Method new()
Creates a new instance of this R6 class.
Usage
TunerBatchCmaes$new()
Method clone()
The objects of this class are cloneable with this method.
Usage
TunerBatchCmaes$clone(deep = FALSE)
Arguments
deep
Whether to make a deep clone.
Source
Hansen N (2016). “The CMA Evolution Strategy: A Tutorial.” 1604.00772.
See Also
Other Tuner:
Tuner
,
mlr_tuners
,
mlr_tuners_design_points
,
mlr_tuners_gensa
,
mlr_tuners_grid_search
,
mlr_tuners_internal
,
mlr_tuners_irace
,
mlr_tuners_nloptr
,
mlr_tuners_random_search
Examples
# Hyperparameter Optimization
# load learner and set search space
learner = lrn("classif.rpart",
cp = to_tune(1e-04, 1e-1, logscale = TRUE),
minsplit = to_tune(p_dbl(2, 128, trafo = as.integer)),
minbucket = to_tune(p_dbl(1, 64, trafo = as.integer))
)
# run hyperparameter tuning on the Palmer Penguins data set
instance = tune(
tuner = tnr("cmaes"),
task = tsk("penguins"),
learner = learner,
resampling = rsmp("holdout"),
measure = msr("classif.ce"),
term_evals = 10)
# best performing hyperparameter configuration
instance$result
# all evaluated hyperparameter configuration
as.data.table(instance$archive)
# fit final model on complete data set
learner$param_set$values = instance$result_learner_param_vals
learner$train(tsk("penguins"))