Optimizes the features for a classification or regression problem by choosing a variable selection wrapper approach. Allows for different optimization methods, such as forward search or a genetic algorithm. You can select such an algorithm (and its settings) by passing a corresponding control object. For a complete list of implemented algorithms look at the subclasses of ([FeatSelControl]).
All algorithms operate on a 0-1-bit encoding of candidate solutions. Per default a single bit corresponds to a single feature, but you are able to change this by using the arguments `bit.names` and `bits.to.features`. Thus allowing you to switch on whole groups of features with a single bit.
selectFeatures(learner, task, resampling, measures, bit.names,
bits.to.features, control, show.info = getMlrOption("show.info"))
(Learner | character(1)
)
The learner.
If you pass a string the learner will be created via makeLearner.
(Task) The task.
([ResampleInstance] | [ResampleDesc]) Resampling strategy for feature selection. If you pass a description, it is instantiated once at the beginning by default, so all points are evaluated on the same training/test sets. If you want to change that behaviour, look at [FeatSelControl].
(list of Measure | Measure) Performance measures to evaluate. The first measure, aggregated by the first aggregation function is optimized, others are simply evaluated. Default is the default measure for the task, see here getDefaultMeasure.
[character] Names of bits encoding the solutions. Also defines the total number of bits in the encoding. Per default these are the feature names of the task.
[function(x, task)] Function which transforms an integer-0-1 vector into a character vector of selected features. Per default a value of 1 in the ith bit selects the ith feature to be in the candidate solution.
[see [FeatSelControl]) Control object for search method. Also selects the optimization algorithm for feature selection.
(logical(1)
)
Print verbose output on console?
Default is set via configureMlr.
([FeatSelResult]).
Other featsel: FeatSelControl
,
analyzeFeatSelResult
,
getFeatSelResult
,
makeFeatSelWrapper
# NOT RUN {
rdesc = makeResampleDesc("Holdout")
ctrl = makeFeatSelControlSequential(method = "sfs", maxit = NA)
res = selectFeatures("classif.rpart", iris.task, rdesc, control = ctrl)
analyzeFeatSelResult(res)
# }
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