One resample of Monte Carlo cross-validation takes a random sample (without replacement) of the original data set to be used for analysis. All other data points are added to the assessment set.
Arguments
- data
A data frame.
- prop
The proportion of data to be retained for modeling/analysis.
- times
The number of times to repeat the sampling.
- strata
A variable in
data
(single character or name) used to conduct stratified sampling. When notNULL
, each resample is created within the stratification variable. Numericstrata
are binned into quartiles.- breaks
A single number giving the number of bins desired to stratify a numeric stratification variable.
- pool
A proportion of data used to determine if a particular group is too small and should be pooled into another group. We do not recommend decreasing this argument below its default of 0.1 because of the dangers of stratifying groups that are too small.
- ...
These dots are for future extensions and must be empty.
Value
An tibble with classes mc_cv
, rset
, tbl_df
, tbl
, and
data.frame
. The results include a column for the data split objects and a
column called id
that has a character string with the resample identifier.
Details
With a strata
argument, the random sampling is conducted
within the stratification variable. This can help ensure that the
resamples have equivalent proportions as the original data set. For
a categorical variable, sampling is conducted separately within each class.
For a numeric stratification variable, strata
is binned into quartiles,
which are then used to stratify. Strata below 10% of the total are
pooled together; see make_strata()
for more details.
Examples
mc_cv(mtcars, times = 2)
#> # Monte Carlo cross-validation (0.75/0.25) with 2 resamples
#> # A tibble: 2 × 2
#> splits id
#> <list> <chr>
#> 1 <split [24/8]> Resample1
#> 2 <split [24/8]> Resample2
mc_cv(mtcars, prop = .5, times = 2)
#> # Monte Carlo cross-validation (0.5/0.5) with 2 resamples
#> # A tibble: 2 × 2
#> splits id
#> <list> <chr>
#> 1 <split [16/16]> Resample1
#> 2 <split [16/16]> Resample2
library(purrr)
data(wa_churn, package = "modeldata")
set.seed(13)
resample1 <- mc_cv(wa_churn, times = 3, prop = .5)
map_dbl(
resample1$splits,
function(x) {
dat <- as.data.frame(x)$churn
mean(dat == "Yes")
}
)
#> [1] 0.2709458 0.2621414 0.2632775
set.seed(13)
resample2 <- mc_cv(wa_churn, strata = churn, times = 3, prop = .5)
map_dbl(
resample2$splits,
function(x) {
dat <- as.data.frame(x)$churn
mean(dat == "Yes")
}
)
#> [1] 0.2652655 0.2652655 0.2652655
set.seed(13)
resample3 <- mc_cv(wa_churn, strata = tenure, breaks = 6, times = 3, prop = .5)
map_dbl(
resample3$splits,
function(x) {
dat <- as.data.frame(x)$churn
mean(dat == "Yes")
}
)
#> [1] 0.2636364 0.2599432 0.2576705