| removeConstantFeatures {mlr} | R Documentation |
Constant features can lead to errors in some models and obviously provide no information in the training set that can be learned from. With the argument “perc”, there is a possibility to also remove features for which less than “perc” percent of the observations differ from the mode value.
removeConstantFeatures(obj, perc = 0, dont.rm = character(0L),
na.ignore = FALSE, tol = .Machine$double.eps^0.5,
show.info = getMlrOption("show.info"))
obj |
(data.frame | Task) |
perc |
( |
dont.rm |
(character) |
na.ignore |
( |
tol |
( |
show.info |
( |
data.frame | Task. Same type as obj.
Other eda_and_preprocess: capLargeValues,
createDummyFeatures,
dropFeatures,
mergeSmallFactorLevels,
normalizeFeatures,
summarizeColumns,
summarizeLevels