mlr3fselect
This package provides feature selection for mlr3. It offers various feature selection wrappers, e.g. random search and sequential feature selection and different termination criteria can be set and combined. 'AutoFSelect' provides a convenient way to perform nested resampling in combination with 'mlr3'. The package is build on bbotk which provides a common framework for optimization.
For feature filters and embedded methods, see mlr3filters
Installation
CRAN version
install.packages("mlr3fselect")
Development version
remotes::install_github("mlr-org/mlr3fselect")
Example
library("mlr3")
library("mlr3fselect")
task = tsk("pima")
learner = lrn("classif.rpart")
resampling = rsmp("holdout")
measure = msr("classif.ce")
# Define termination criterion
terminator = trm("evals", n_evals = 20)
# Create fselect instance
instance = FSelectInstanceSingleCrit$new(task = task,
learner = learner,
resampling = resampling,
measure = measure,
terminator = terminator)
# Load fselector
fselector = fs("random_search")
# Trigger optimization
fselector$optimize(instance)
# View results
instance$result