2

When importing a dataset from Stata to R, it often comes with helpful labels for numeric variables. I would like to be able to convert the data in the labels to a new separate variable. The equivalent command in Stata is decode.

library(tidyverse)
library(webuse)
auto <- webuse("auto")
auto$foreign #Want to convert this to a character variable that reads "Domestic" or "Foreign"
2

One option is to use the labelled package, e.g.

library(tidyverse)
#install.packages("webuse")
library(webuse)
#install.packages("labelled")
library(labelled)

auto <- webuse("auto")
auto$foreign
auto$labels <- labelled::to_factor(auto$foreign, levels = "labels")
auto$labels
#>[1] Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic
#>[13] Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic
#>[25] Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic
#>[37] Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic Domestic
#>[49] Domestic Domestic Domestic Domestic Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign 
#>[61] Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign  Foreign 
#>[73] Foreign  Foreign 
#>attr(,"label")
#>[1] Car type
#>Levels: Domestic Foreign

Or, to keep the values as well as the labels:

auto$labels <- labelled::to_factor(auto$foreign, levels = "prefixed")
auto$labels
#>[1] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic
#>[9] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic
#>[17] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic
#>[25] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic
#>[33] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic
#>[41] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic [0] Domestic
#>[49] [0] Domestic [0] Domestic [0] Domestic [0] Domestic [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign 
#>[57] [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign 
#>[65] [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign  [1] Foreign 
#>[73] [1] Foreign  [1] Foreign 
#>attr(,"label")
#>[1] Car type
#>Levels: [0] Domestic [1] Foreign

Edit

To use dplyr mutate:

library(tidyverse)
#install.packages("webuse")
library(webuse)
#install.packages("labelled")
library(labelled)

auto <- webuse("auto")
auto %>% 
  mutate(labels = labelled::to_factor(auto$foreign, levels = "labels")) %>% 
  select(labels)
2
  • Is there also a way to do this in a tidyverse-style mutate pipe? – JACK LANDRY Apr 12 at 12:23
  • 1
    Yep; edited answer to show one way of doing it via dplyr mutate – jared_mamrot Apr 12 at 23:20

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