46

Consider this simple example:

library(dplyr)

dataframe <- data_frame(helloo = c(1,2,3,4,5,6),
                        ooooHH = c(1,1,1,2,2,2),
                        ahaaa = c(200,400,120,300,100,100))

# A tibble: 6 x 3
  helloo ooooHH ahaaa
   <dbl>  <dbl> <dbl>
1      1      1   200
2      2      1   400
3      3      1   120
4      4      2   300
5      5      2   100
6      6      2   100

Here I want to apply the function ntile to all the columns that contains oo, but I would like these new columns to be called cat + the corresponding column.

I know I can do this

dataframe %>% mutate_at(vars(contains('oo')), .funs = funs(ntile(., 2)))
# A tibble: 6 x 3
  helloo ooooHH ahaaa
   <int>  <int> <dbl>
1      1      1   200
2      1      1   400
3      1      1   120
4      2      2   300
5      2      2   100
6      2      2   100

But what I need is this

# A tibble: 8 x 5
  helloo   ooooHH   ahaaa cat_helloo cat_ooooHH
     <dbl>    <dbl> <dbl>    <int>    <int>
1        1        1   200        1        1
2        2        1   400        1        1
3        3        1   120        1        1
4        4        2   300        2        2
5        5        2   100        2        2
6        5        2   100        2        2
7        6        2   100        2        2
8        6        2   100        2        2

Is there a solution that does NOT require to store the intermediate data, and merge back to the original dataframe?

74

Edited to reflect changes in dplyr. As of dplyr 0.8.0, funs() is deprecated and list() with ~ should be used instead.

You can give names to the functions to the list you pass to .funs to make new variables with the names as suffixes attached.

dataframe %>% mutate_at(vars(contains('oo')), .funs = list(cat = ~ntile(., 2)))

# A tibble: 6 x 5
  helloo ooooHH ahaaa helloo_cat ooooHH_cat
   <dbl>  <dbl> <dbl>      <int>      <int>
1      1      1   200          1          1
2      2      1   400          1          1
3      3      1   120          1          1
4      4      2   300          2          2
5      5      2   100          2          2
6      6      2   100          2          2

If you want it as a prefix instead, you could then use rename_at to change the names.

dataframe %>% 
     mutate_at(vars(contains('oo')), .funs = list(cat = ~ntile(., 2))) %>%
     rename_at( vars( contains( "_cat") ), list( ~paste("cat", gsub("_cat", "", .), sep = "_") ) )

# A tibble: 6 x 5
  helloo ooooHH ahaaa cat_helloo cat_ooooHH
   <dbl>  <dbl> <dbl>      <int>      <int>
1      1      1   200          1          1
2      2      1   400          1          1
3      3      1   120          1          1
4      4      2   300          2          2
5      5      2   100          2          2
6      6      2   100          2          2

Previous code with funs() from earlier versions of dplyr:

dataframe %>% 
     mutate_at(vars(contains('oo')), .funs = funs(cat = ntile(., 2))) %>%
     rename_at( vars( contains( "_cat") ), funs( paste("cat", gsub("_cat", "", .), sep = "_") ) )
  • 2
    I guess one can always write some regex stuff to change the name of the col_cat variables? – ℕʘʘḆḽḘ Aug 29 '17 at 20:32
  • @ℕʘʘḆḽḘ Yep. Possibly in rename_at for convenience; added example in edit. – aosmith Aug 29 '17 at 20:39
  • 1
    The renaming appears to only append if there's more than one column that contains a match. Is there a way to make it append for a single match too? Example: dataframe %>% mutate_at(vars(contains('ah')), .funs = funs(cat = ntile(., 2))) – bheavner Sep 8 '17 at 17:29
  • @bheavner Not that I know of, but you might ask a new question. For a single variable you could write a function using mutate and set the variable names based on the function input. See the "Setting variable names" section of Programming with dplyr – aosmith Sep 8 '17 at 18:24

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