The goal of missMethods is to make the creation and handling of missing data as well as the evaluation of missing data methods easier.
You can install the released version of missMethods from CRAN with:
install.packages("missMethods")And the development version from GitHub with:
# install.packages("devtools")
devtools::install_github("torockel/missMethods")missMethods mainly provides three types of functions:
delete_ functions for generating missing valuesimpute_ functions for imputing missing valuesevaluate_ functions for evaluating missing data
methodsRun help(package = "missMethods") to see all functions.
More details for the delete_ functions are given in a
vignette (run vignette("Generating-missing-values")).
This is a very basic workflow to generate missing values, impute the generated missing values and evaluate the imputation result:
library(missMethods)
set.seed(123)
ds_comp <- data.frame(X = rnorm(100), Y = rnorm(100))
ds_mis <- delete_MCAR(ds_comp, 0.3)
ds_imp <- impute_mean(ds_mis)
evaluate_imputed_values(ds_imp, ds_comp, "RMSE")
#> [1] 0.5328238
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