20

I'm trying to group_by multiple columns in my data frame and I can't write out every single column name in the group_by function so I want to call the column names as a vector like so:

cols <- colnames(mtcars)[grep("[a-z]{3,}$", colnames(mtcars))]
mtcars %>% filter(disp < 160) %>% group_by(cols) %>% summarise(n = n())

This returns error:

Error in mutate_impl(.data, dots) : 
  Column `mtcars[colnames(mtcars)[grep("[a-z]{3,}$", colnames(mtcars))]]` must be length 12 (the number of rows) or one, not 7

I definitely want to use a dplyr function to do this, but can't figure this one out.

0

2 Answers 2

39

You can use group_by_at, where you can pass a character vector of column names as group variables:

mtcars %>% 
    filter(disp < 160) %>% 
    group_by_at(cols) %>% 
    summarise(n = n())
# A tibble: 12 x 8
# Groups:   mpg, cyl, disp, drat, qsec, gear [?]
#     mpg   cyl  disp  drat  qsec  gear  carb     n
#   <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <int>
# 1  19.7     6 145.0  3.62 15.50     5     6     1
# 2  21.4     4 121.0  4.11 18.60     4     2     1
# 3  21.5     4 120.1  3.70 20.01     3     1     1
# 4  22.8     4 108.0  3.85 18.61     4     1     1
# ...

Or you can move the column selection inside group_by_at using vars and column select helper functions:

mtcars %>% 
    filter(disp < 160) %>% 
    group_by_at(vars(matches('[a-z]{3,}$'))) %>% 
    summarise(n = n())

# A tibble: 12 x 8
# Groups:   mpg, cyl, disp, drat, qsec, gear [?]
#     mpg   cyl  disp  drat  qsec  gear  carb     n
#   <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <int>
# 1  19.7     6 145.0  3.62 15.50     5     6     1
# 2  21.4     4 121.0  4.11 18.60     4     2     1
# 3  21.5     4 120.1  3.70 20.01     3     1     1
# 4  22.8     4 108.0  3.85 18.61     4     1     1
# ...
1
  • Thank you for this. I've been searching and learning for days to find out this is what I needed.
    – mienaikoe
    Feb 3, 2021 at 3:00
18

I believe group_by_at has now been superseded by using a combination of group_by and across. And summarise has an experimental .groups argument where you can choose how to handle the grouping after you create a summarised object. Here is an alternative to consider:

cols <- colnames(mtcars)[grep("[a-z]{3,}$", colnames(mtcars))]

original <- mtcars %>% 
  filter(disp < 160) %>% 
  group_by_at(cols) %>% 
  summarise(n = n())

superseded <- mtcars %>%
  filter(disp < 160) %>%
  group_by(across(all_of(cols))) %>%
  summarise(n = n(), .groups = 'drop_last')

all.equal(original, superseded)

Here is a blog post that goes into more detail about using the across function: https://www.tidyverse.org/blog/2020/04/dplyr-1-0-0-colwise/

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.