replace_nas_with_explicit: Create explicit factor level for missing values
Description
Missing values are converted to a factor level.
This explicit assignment can reduce the chances that missing values
are inadvertently ignored. It also allows the presence of a missing
to become a predictor in models.
Usage
replace_nas_with_explicit(
scores,
new_na_label = "Unknown",
create_factor = FALSE,
add_unknown_level = FALSE
)
Value
An array of values, where the NA
values are now a factor level,
with the label specified by the new_na_label
value.
Arguments
- scores
An array of values, ideally either factor or character.
Required
- new_na_label
The factor label assigned to the missing value.
Defaults to Unknown
.
- create_factor
Converts scores
into a factor, if it isn't one
already. Defaults to FALSE
.
- add_unknown_level
Should a new factor level be created?
(Specify TRUE
if it already exists.) Defaults to FALSE
.
Examples
Run this codelibrary(REDCapR) # Load the package into the current R session.
Run the code above in your browser using DataLab