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The goal of imputeGeneric is to ease the implementation of imputation functions.
You can install the development version of imputeGeneric from GitHub with:
# install.packages("devtools")
::install_github("torockel/imputeGeneric") devtools
The aim of imputeGeneric is to make the implementation and usage of
imputation methods easier. The main function of the package is
impute_iterative()
. This function can turn any parsnip model into
an imputation method. Furthermore, other customized approaches can be
used in a general imputation framework. For more information, see the
documentations of impute_iterative()
,
impute_supervised()
, impute_unsupervised()
and
the following examples.
The use of a parsnip model for imputation is demonstrated using
regression trees from the rpart package via parsnip
(decision_tree("regression")
). First, a data set with
missing values is created. Then, this data set is imputed once with
regression trees using only completely observed rows and columns for the
model building.
library(imputeGeneric)
library(parsnip)
# create data set
set.seed(123)
<- data.frame(X = rnorm(100), Y = rnorm(100))
ds_mis $Z <- 5 + 2* ds_mis$X + ds_mis$Y + rnorm(100)
ds_mis$Z[sample.int(100, 30)] <- NA
ds_mis$Y[sample.int(100, 20)] <- NA
ds_mis# impute data set
<- impute_iterative(ds_mis, decision_tree("regression"), max_iter = 1)
ds_imp anyNA(ds_imp)
#> [1] FALSE
To use other parsnip models instead of regression trees, only the
model_spec_parsnip
argument must be altered. E.g. for
linear regression instead of regression trees use
linear_reg()
.
<- impute_iterative(ds_mis, linear_reg(), max_iter = 1)
ds_imp_lm anyNA(ds_imp_lm)
#> [1] FALSE
Many aspects of the imputation can be specified and customized. The
missing values can be initially imputed e.g. with per column mean values
(initial_imputation_fun = missMethods::impute_mean
). In
addition, all objects and columns can be used for the imputation models
(rows_used_for_imputation = "all"
and
cols_used_for_imputation = "all"
). Furthermore, the
imputation can be iterative. The iteration will be stopped, if either
the difference between two imputed data sets falls below a threshold
(stop_fun = stop_ds_difference, stop_fun_args = list(eps = 0.1)
)
or the maximum number of iterations (max_iter = 5
) is
reached.
<- impute_iterative(
ds_imp2 decision_tree("regression"),
ds_mis, initial_imputation_fun = missMethods::impute_mean,
cols_used_for_imputation = "all",
rows_used_for_imputation = "all",
stop_fun = stop_ds_difference,
stop_fun_args = list(eps = 0.1),
max_iter = 5)
anyNA(ds_imp2)
#> [1] FALSE
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.