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Consider the following example

data <- data_frame(name = c('A','B','C','C',NA,'D'))

> data
# A tibble: 6 × 1
   name
  <chr>
1     A
2     B
3     C
4     C
5  <NA>
6     D

Here, I know that the variable name actually maps to 'A' -> 'one' and 'B' -> 'two'. I would simply like to create a variable that gets the mapping value. Of course, in my original dataset I have many more cases to map.

Something that does not work is the following.

data <- data %>%
  mutate(mapping = ifelse(name == 'A', 'one', name),
         mapping = ifelse(name == 'B', 'two', name))
> data
# A tibble: 6 × 2
   name mapping
  <chr>   <chr>
1     A       A
2     B     two
3     C       C
4     C       C
5  <NA>    <NA>
6     D       D

What is wrong here? What is the most efficient way to do so in dplyr?

Many thanks!

  • 3
    I think the ifelse expressions should be ifelse(name == 'A', 'one', name). At the moment ifelse is looking for a variable named mapping in your data frame and it doesn't exist yet. – gfgm Nov 3 '16 at 14:28
  • 1
    You could nest the ifelse statements if you're going to have to hard code all of the mapping values. i.e. `ifelse(name == 'A', 'one', ifelse(name == 'B', 'two', .... )) – Craig Nov 3 '16 at 14:32
  • 1
    A potentially more efficient approach would be to match the mapping values. For example: vec <- c(A = "one", B = "two"); mutate(data, mapping = vec[match(name, names(vec))]) – docendo discimus Nov 3 '16 at 14:32
  • 1
    How is it failing? Do the A cases not resolve correctly? You may be redefining the variable mapping in your second call. Try nesting the ifelse statements? – gfgm Nov 3 '16 at 14:33
  • 1
    Agreed - perhaps @docendodiscimus's approach is a better option – Craig Nov 3 '16 at 14:34
9

If you want to avoid nested ifelse , you should simply create a mapping data frame and inner join with it .

mapping_df <- data.frame(name = c('A', 'B', 'C' . . . . 'Z'), mapping = c(1:26))

left_join(data, mapping_df, by = "name")
  • very smart. its unfortunate there is no out-of-the-box dplyr solution for that but this might actually be even better – ℕʘʘḆḽḘ Nov 3 '16 at 14:43
1

For two values you could try something like:

data <- data %>%
    mutate(mapping = ifelse(name == 'A', 'one',
    ifelse(name == 'B', 'two', 'other')))

However you would be better off creating a separate data frame that contained the map and then using dplyr::left_join() to add it to your main df.

1
data %>% mutate(mapping = recode(name, A="one", B="two"))

Recode may be handy when there aren't too many replacements.

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