step_impute_linear {recipes} | R Documentation |
Impute numeric variables via a linear model
Description
step_impute_linear()
creates a specification of a recipe step that will
create linear regression models to impute missing data.
Usage
step_impute_linear(
recipe,
...,
role = NA,
trained = FALSE,
impute_with = imp_vars(all_predictors()),
models = NULL,
skip = FALSE,
id = rand_id("impute_linear")
)
Arguments
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;
these variables must be of type |
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 |
models |
The |
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. |
Details
For each variable requiring imputation, a linear model is fit
where the outcome is the variable of interest and the predictors are any
other variables listed in the impute_with
formula. Note that if a variable
that is to be imputed is also in impute_with
, this variable will be ignored.
The variable(s) to be imputed must be of type numeric
. The imputed values
will keep the same type as their original data (i.e, model predictions are
coerced to integer as needed).
Since this is a linear regression, the imputation model only uses complete cases for the training set predictors.
Value
An updated version of recipe
with the new step added to the
sequence of any existing operations.
Tidying
When you tidy()
this step, a tibble is returned with
columns terms
, model
, and id
:
- terms
character, the selectors or variables selected
- model
list, list of fitted
lm()
models- id
character, id of this step
Case weights
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
.
References
Kuhn, M. and Johnson, K. (2013). Feature Engineering and Selection https://bookdown.org/max/FES/handling-missing-data.html
See Also
Other imputation steps:
step_impute_bag()
,
step_impute_knn()
,
step_impute_lower()
,
step_impute_mean()
,
step_impute_median()
,
step_impute_mode()
,
step_impute_roll()
Examples
data(ames, package = "modeldata")
set.seed(393)
ames_missing <- ames
ames_missing$Longitude[sample(1:nrow(ames), 200)] <- NA
imputed_ames <-
recipe(Sale_Price ~ ., data = ames_missing) %>%
step_impute_linear(
Longitude,
impute_with = imp_vars(Latitude, Neighborhood, MS_Zoning, Alley)
) %>%
prep(ames_missing)
imputed <-
bake(imputed_ames, new_data = ames_missing) %>%
dplyr::rename(imputed = Longitude) %>%
bind_cols(ames %>% dplyr::select(original = Longitude)) %>%
bind_cols(ames_missing %>% dplyr::select(Longitude)) %>%
dplyr::filter(is.na(Longitude))
library(ggplot2)
ggplot(imputed, aes(x = original, y = imputed)) +
geom_abline(col = "green") +
geom_point(alpha = .3) +
coord_equal() +
labs(title = "Imputed Values")