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#' Apply Adaptive Synthetic Algorithm
#'
#' `step_adasyn()` creates a *specification* of a recipe step that generates
#' synthetic positive instances using ADASYN algorithm.
#'
#' @inheritParams recipes::step_center
#' @inheritParams step_upsample
#' @param ... One or more selector functions to choose which
#' variable is used to sample the data. See [selections()]
#' for more details. The selection should result in _single
#' factor variable_. For the `tidy` method, these are not
#' currently used.
#' @param role Not used by this step since no new variables are
#' created.
#' @param column A character string of the variable name that will
#' be populated (eventually) by the `...` selectors.
#' @param neighbors An integer. Number of nearest neighbor that are used
#' to generate the new examples of the minority class.
#' @param seed An integer that will be used as the seed when
#' applied.
#' @return An updated version of `recipe` with the new step
#' added to the sequence of existing steps (if any). For the
#' `tidy` method, a tibble with columns `terms` which is
#' the variable used to sample.
#'
#' @details
#' All columns in the data are sampled and returned by [juice()]
#' and [bake()].
#'
#' All columns used in this step must be numeric with no missing data.
#'
#' When used in modeling, users should strongly consider using the
#' option `skip = TRUE` so that the extra sampling is _not_
#' conducted outside of the training set.
#'
#' # Tidying
#'
#' When you [`tidy()`][tidy.recipe()] this step, a tibble with columns `terms`
#' (the selectors or variables selected) will be returned.
#'
#' ```{r, echo = FALSE, results="asis"}
#' step <- "step_adasyn"
#' result <- knitr::knit_child("man/rmd/tunable-args.Rmd")
#' cat(result)
#' ```
#'
#' @template case-weights-not-supported
#'
#' @references He, H., Bai, Y., Garcia, E. and Li, S. 2008. ADASYN: Adaptive
#' synthetic sampling approach for imbalanced learning. Proceedings of
#' IJCNN 2008. (IEEE World Congress on Computational Intelligence). IEEE
#' International Joint Conference. pp.1322-1328.
#'
#' @seealso [adasyn()] for direct implementation
#' @family Steps for over-sampling
#'
#' @export
#' @examples
#' library(recipes)
#' library(modeldata)
#' data(hpc_data)
#'
#' hpc_data0 <- hpc_data %>%
#' select(-protocol, -day)
#'
#' orig <- count(hpc_data0, class, name = "orig")
#' orig
#'
#' up_rec <- recipe(class ~ ., data = hpc_data0) %>%
#' # Bring the minority levels up to about 1000 each
#' # 1000/2211 is approx 0.4523
#' step_adasyn(class, over_ratio = 0.4523) %>%
#' prep()
#'
#' training <- up_rec %>%
#' bake(new_data = NULL) %>%
#' count(class, name = "training")
#' training
#'
#' # Since `skip` defaults to TRUE, baking the step has no effect
#' baked <- up_rec %>%
#' bake(new_data = hpc_data0) %>%
#' count(class, name = "baked")
#' baked
#'
#' # Note that if the original data contained more rows than the
#' # target n (= ratio * majority_n), the data are left alone:
#' orig %>%
#' left_join(training, by = "class") %>%
#' left_join(baked, by = "class")
#'
#' library(ggplot2)
#'
#' ggplot(circle_example, aes(x, y, color = class)) +
#' geom_point() +
#' labs(title = "Without ADASYN")
#'
#' recipe(class ~ x + y, data = circle_example) %>%
#' step_adasyn(class) %>%
#' prep() %>%
#' bake(new_data = NULL) %>%
#' ggplot(aes(x, y, color = class)) +
#' geom_point() +
#' labs(title = "With ADASYN")
step_adasyn <-
function(recipe, ..., role = NA, trained = FALSE, column = NULL,
over_ratio = 1, neighbors = 5, skip = TRUE,
seed = sample.int(10^5, 1), id = rand_id("adasyn")) {
add_step(
recipe,
step_adasyn_new(
terms = enquos(...),
role = role,
trained = trained,
column = column,
over_ratio = over_ratio,
neighbors = neighbors,
predictors = NULL,
skip = skip,
seed = seed,
id = id
)
)
}
step_adasyn_new <-
function(terms, role, trained, column, over_ratio, neighbors, predictors,
skip, seed, id) {
step(
subclass = "adasyn",
terms = terms,
role = role,
trained = trained,
column = column,
over_ratio = over_ratio,
neighbors = neighbors,
predictors = predictors,
skip = skip,
id = id,
seed = seed,
id = id
)
}
#' @export
prep.step_adasyn <- function(x, training, info = NULL, ...) {
col_name <- recipes_eval_select(x$terms, training, info)
if (length(col_name) > 1) {
rlang::abort("The selector should select at most a single variable")
}
if (length(col_name) == 1) {
check_column_factor(training, col_name)
}
predictors <- setdiff(get_from_info(info, "predictor"), col_name)
check_type(training[, predictors], types = c("double", "integer"))
check_na(select(training, all_of(c(col_name, predictors))))
step_adasyn_new(
terms = x$terms,
role = x$role,
trained = TRUE,
column = col_name,
over_ratio = x$over_ratio,
neighbors = x$neighbors,
predictors = predictors,
skip = x$skip,
seed = x$seed,
id = x$id
)
}
#' @export
bake.step_adasyn <- function(object, new_data, ...) {
col_names <- unique(c(object$predictors, object$column))
check_new_data(col_names, object, new_data)
if (length(object$column) == 0L) {
# Empty selection
return(new_data)
}
new_data <- as.data.frame(new_data)
predictor_data <- new_data[, col_names]
# adasyn with seed for reproducibility
with_seed(
seed = object$seed,
code = {
synthetic_data <- adasyn_impl(
predictor_data,
object$column,
k = object$neighbors,
over_ratio = object$over_ratio
)
synthetic_data <- as_tibble(synthetic_data)
}
)
new_data <- na_splice(new_data, synthetic_data, object)
new_data
}
#' @export
print.step_adasyn <-
function(x, width = max(20, options()$width - 26), ...) {
title <- "adasyn based on "
print_step(x$column, x$terms, x$trained, title, width)
invisible(x)
}
#' @rdname tidy.recipe
#' @param x A `step_adasyn` object.
#' @export
tidy.step_adasyn <- function(x, ...) {
if (is_trained(x)) {
res <- tibble(terms = unname(x$column))
} else {
term_names <- sel2char(x$terms)
res <- tibble(terms = unname(term_names))
}
res$id <- x$id
res
}
#' @export
#' @rdname tunable_themis
tunable.step_adasyn <- function(x, ...) {
tibble::tibble(
name = c("over_ratio", "neighbors"),
call_info = list(
list(pkg = "dials", fun = "over_ratio"),
list(pkg = "dials", fun = "neighbors", range = c(1, 10))
),
source = "recipe",
component = "step_adasyn",
component_id = x$id
)
}
#' S3 methods for tracking which additional packages are needed for steps.
#'
#' @param x A recipe step
#' @return A character vector
#' @rdname required_pkgs.step
#' @keywords internal
#' @export
required_pkgs.step_adasyn <- function(x, ...) {
c("themis")
}
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