step_impute_bag | R Documentation |
step_impute_bag()
creates a specification of a recipe step that will
create bagged tree models to impute missing data.
step_impute_bag(
recipe,
...,
role = NA,
trained = FALSE,
impute_with = imp_vars(all_predictors()),
trees = 25,
models = NULL,
options = list(keepX = FALSE),
seed_val = sample.int(10^4, 1),
skip = FALSE,
id = rand_id("impute_bag")
)
imp_vars(...)
recipe |
A recipe object. The step will be added to the sequence of operations for this recipe. |
... |
One or more selector functions to choose variables to be imputed.
When used with |
role |
Not used by this step since no new variables are created. |
trained |
A logical to indicate if the quantities for preprocessing have been estimated. |
impute_with |
A call to |
trees |
An integer for the number of bagged trees to use in each model. |
models |
The |
options |
A list of options to |
seed_val |
An integer used to create reproducible models. The same seed is used across all imputation models. |
skip |
A logical. Should the step be skipped when the
recipe is baked by |
id |
A character string that is unique to this step to identify it. |
For each variable requiring imputation, a bagged tree is created
where the outcome is the variable of interest and the predictors are any
other variables listed in the impute_with
formula. One advantage to the
bagged tree is that is can accept predictors that have missing values
themselves. This imputation method can be used when the variable of interest
(and predictors) are numeric or categorical. Imputed categorical variables
will remain categorical. Also, integers will be imputed to integer too.
Note that if a variable that is to be imputed is also in impute_with
,
this variable will be ignored.
It is possible that missing values will still occur after imputation if a large majority (or all) of the imputing variables are also missing.
As of recipes
0.1.16, this function name changed from step_bagimpute()
to step_impute_bag()
.
An updated version of recipe
with the new step added to the
sequence of any existing operations.
When you tidy()
this step, a tibble with columns
terms
(the selectors or variables selected) and model
(the bagged tree object) is returned.
When you tidy()
this step, a tibble is returned with
columns terms
, model
, and id
:
character, the selectors or variables selected
list, the bagged tree object
character, id of this step
This step has 1 tuning parameters:
trees
: # Trees (type: integer, default: 25)
The underlying operation does not allow for case weights.
Kuhn, M. and Johnson, K. (2013). Applied Predictive Modeling. Springer Verlag.
Other imputation steps:
step_impute_knn()
,
step_impute_linear()
,
step_impute_lower()
,
step_impute_mean()
,
step_impute_median()
,
step_impute_mode()
,
step_impute_roll()
data("credit_data", package = "modeldata")
## missing data per column
vapply(credit_data, function(x) mean(is.na(x)), c(num = 0))
set.seed(342)
in_training <- sample(1:nrow(credit_data), 2000)
credit_tr <- credit_data[in_training, ]
credit_te <- credit_data[-in_training, ]
missing_examples <- c(14, 394, 565)
rec <- recipe(Price ~ ., data = credit_tr)
## Not run:
impute_rec <- rec %>%
step_impute_bag(Status, Home, Marital, Job, Income, Assets, Debt)
imp_models <- prep(impute_rec, training = credit_tr)
imputed_te <- bake(imp_models, new_data = credit_te)
credit_te[missing_examples, ]
imputed_te[missing_examples, names(credit_te)]
tidy(impute_rec, number = 1)
tidy(imp_models, number = 1)
## Specifying which variables to imputate with
impute_rec <- rec %>%
step_impute_bag(Status, Home, Marital, Job, Income, Assets, Debt,
impute_with = imp_vars(Time, Age, Expenses),
# for quick execution, nbagg lowered
options = list(nbagg = 5, keepX = FALSE)
)
imp_models <- prep(impute_rec, training = credit_tr)
imputed_te <- bake(imp_models, new_data = credit_te)
credit_te[missing_examples, ]
imputed_te[missing_examples, names(credit_te)]
tidy(impute_rec, number = 1)
tidy(imp_models, number = 1)
## End(Not run)
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.