
Last chance! 50% off unlimited learning
Sale ends in
step_sample
creates a specification of a recipe step
that will sample rows using dplyr::sample_n()
or
dplyr::sample_frac()
.
step_sample(
recipe,
...,
role = NA,
trained = FALSE,
size = NULL,
replace = FALSE,
skip = TRUE,
id = rand_id("sample")
)
An updated version of recipe
with the new step added to the
sequence of any existing operations.
A recipe object. The step will be added to the sequence of operations for this recipe.
Argument ignored; included for consistency with other step specification functions.
Not used by this step since no new variables are created.
A logical to indicate if the quantities for preprocessing have been estimated.
An integer or fraction. If the value is within (0, 1),
dplyr::sample_frac()
is applied to the data. If an integer
value of 1 or greater is used, dplyr::sample_n()
is applied.
The default of NULL
uses dplyr::sample_n()
with the size
of the training set (or smaller for smaller new_data
).
Sample with or without replacement?
A logical. Should the step be skipped when the
recipe is baked by bake()
? While all operations are baked
when prep()
is run, some operations may not be able to be
conducted on new data (e.g. processing the outcome variable(s)).
Care should be taken when using skip = FALSE
.
A character string that is unique to this step to identify it.
This step can entirely remove observations (rows of data), which can have
unintended and/or problematic consequences when applying the step to new
data later via bake()
. Consider whether skip = TRUE
or
skip = FALSE
is more appropriate in any given use case. In most instances
that affect the rows of the data being predicted, this step probably should
not be applied at all; instead, execute operations like this outside and
before starting a preprocessing recipe()
.
When you tidy()
this step, a tibble with columns
size
, replace
, and id
is returned.
This step performs an unsupervised operation that can utilize case weights.
As a result, case weights are only used with frequency weights. For more
information, see the documentation in case_weights and the examples on
tidymodels.org
.
Other row operation steps:
step_arrange()
,
step_filter()
,
step_impute_roll()
,
step_lag()
,
step_naomit()
,
step_shuffle()
,
step_slice()
Other dplyr steps:
step_arrange()
,
step_filter()
,
step_mutate_at()
,
step_mutate()
,
step_rename_at()
,
step_rename()
,
step_select()
,
step_slice()
# Uses `sample_n`
recipe(~., data = mtcars) %>%
step_sample(size = 1) %>%
prep(training = mtcars) %>%
bake(new_data = NULL) %>%
nrow()
# Uses `sample_frac`
recipe(~., data = mtcars) %>%
step_sample(size = 0.9999) %>%
prep(training = mtcars) %>%
bake(new_data = NULL) %>%
nrow()
# Uses `sample_n` and returns _at maximum_ 20 samples.
smaller_cars <-
recipe(~., data = mtcars) %>%
step_sample() %>%
prep(training = mtcars %>% slice(1:20))
bake(smaller_cars, new_data = NULL) %>% nrow()
bake(smaller_cars, new_data = mtcars %>% slice(21:32)) %>% nrow()
Run the code above in your browser using DataLab