27

I would like to add overall summary rows while also calculating summaries by group using dplyr. I have found various questions asking how to do this, e.g. here, here, and here, but no clear solution. One possible approach is to perform count twice and bind the rows:

mtcars %>% 
  count(cyl, gear) %>% 
  bind_rows(
    count(mtcars, gear)
  )

which nearly produces what I need (the left-most column has NAs rather than 'Total' or similar):

     cyl  gear     n
   <dbl> <dbl> <int>
1      4     3     1
2      4     4     8
3      4     5     2
4      6     3     2
5      6     4     4
6      6     5     1
7      8     3    12
8      8     5     2
9     NA     3    15
10    NA     4    12
11    NA     5     5

Am I missing an easier/built-in solution?

| |
  • 4
    you could just do addmargins(table(mtcars$cyl, mtcars$gear)) in base R. – mtoto Sep 15 '16 at 9:12
30

With adorn_totals() from the janitor package:

library(janitor)
mtcars %>%
  tabyl(cyl, gear) %>%
  adorn_totals("row") 

   cyl  3  4 5
     4  1  8 2
     6  2  4 1
     8 12  0 2
 Total 15 12 5

To get from there to the "long" form in your post, add tidyr::gather() to the pipeline:

mtcars %>%
  tabyl(cyl, gear) %>%
  adorn_totals("row") %>%
  tidyr::gather(gear, n, 2:ncol(.), convert = TRUE)

     cyl gear  n
1      4    3  1
2      6    3  2
3      8    3 12
4  Total    3 15
5      4    4  8
6      6    4  4
7      8    4  0
8  Total    4 12
9      4    5  2
10     6    5  1
11     8    5  2
12 Total    5  5

Self-promotion alert, I authored this package - adding this answer b/c it's a genuinely efficient solution here.

| |
  • 1
    Thanks for the additional method suggestion. I have recently started using janitor, mostly for clean_names(), excel_numeric_to_date() and remove_empty(), all of which are super helpful in my day-to-day work. I'll now add these functions too... Congratulations on a fantastic package! – Jonny Mar 27 '18 at 20:47
9

One option is with do

mtcars %>%
   count(cyl, gear) %>%
   ungroup() %>% 
   mutate(cyl=as.character(cyl)) %>% 
   do(bind_rows(., data.frame(cyl="Total", count(mtcars, gear)))) 
   #or replace the last 'do' step with 
   #bind_rows(cbind(cyl='Total', count(mtcars, gear))) #from  @JonnyPolonsky's comments

#      cyl  gear     n
#   <chr> <dbl> <int>
#1      4     3     1
#2      4     4     8
#3      4     5     2
#4      6     3     2
#5      6     4     4
#6      6     5     1
#7      8     3    12
#8      8     5     2
#9  Total     3    15
#10 Total     4    12
#11 Total     5     5
| |
  • 2
    Thanks @akrun, that works very well. I am not sure that the do call is necessary - mtcars %>% count(cyl, gear) %>% ungroup() %>% mutate(cyl=as.character(cyl)) %>% bind_rows(cbind(cyl='Total', count(mtcars, gear))) works just as well. I will wait to see if anyone offers an in-built dplyr answer, and will accept in 24 hours of not. Many thanks – Jonny Sep 15 '16 at 9:28
  • 1
    @JonnyPolonsky Thanks, I am in a bus, so couldn't use the mouse. Tht should work as well. – akrun Sep 15 '16 at 9:32
  • No need for the ungroup(). Count() calls group_by() before and ungroup() after. – Nettle Jan 6 '18 at 17:52
  • @Nettle I used ungroup because there is a mutate step which doesn't need group_by although it works with the group_by – akrun Jan 7 '18 at 3:59
  • @akrun RE: comment by @Jonny "I am not sure that the do call is necessary" - I have just realised that it is preferable to use do(). When creating the row margin you want to be able to refer to . so you can access the data as mutate()d by previous steps. It's usually not going to be possible to calculate the marginal statistics off the original data frame as was done in this simple example. do() provides this. – Michael Henry Mar 26 at 3:14
8

An addition to @arkrun's answer that is not easy to add as a comment:

Although a little more complex, this format allows for previous modifications in the data frame. Useful when there is a longer chain of verbs before the table is generated. (You want to change names, or select only specific variables)

mtcars %>%
   count(cyl, gear) %>%
   ungroup() %>% 
   mutate(cyl=as.character(cyl))
bind_rows(group_by(.,gear) %>%
              summarise(n=sum(n)) %>%
              mutate(cyl='Total')) %>%
spread(cyl)

## A tibble: 3 x 5
#   gear   `4`   `6`   `8` Total
#* <dbl> <dbl> <dbl> <dbl> <dbl>
#1     3     1     2    12    15
#2     4     8     4     0    12
#3     5     2     1     2     5

This can also be doubled up to generate a total row for the spread as well.

mtcars %>%
  count(cyl, gear) %>%
  ungroup() %>% 
  mutate(cyl=as.character(cyl),
         gear = as.character(gear)) %>%
  bind_rows(group_by(.,gear) %>%
              summarise(n=sum(n)) %>%
              mutate(cyl='Total')) %>%
  bind_rows(group_by(.,cyl) %>%
              summarise(n=sum(n)) %>%
              mutate(gear='Total')) %>%
  spread(cyl,n,fill=0)

# A tibble: 4 x 5
   gear   `4`   `6`   `8` Total
* <chr> <dbl> <dbl> <dbl> <dbl>
1     3     1     2    12    15
2     4     8     4     0    12
3     5     2     1     2     5
4 Total    11     7    14    32
| |
2

Here's a take on the accepted answer, using new functions introduced in dplyr 1.0.0 and tidyr 1.0.0.

We pivot the counts using the new tidyr::pivot_wider. Then use the new dplyr::rowwise and dplyr::c_across to sum the counts for the total column.

We can also use tidyr::pivot_longer to get in desired long format.

library(dplyr, warn.conflicts = FALSE)
library(tidyr)

cyl_gear_sum <- mtcars %>%
  count(cyl, gear) %>%
  pivot_wider(names_from = gear, values_from = n, values_fill = list(n = 0)) %>%
  rowwise(cyl) %>%
  mutate(gear_total = sum(c_across()))

cyl_gear_sum
#> # A tibble: 3 x 5
#> # Rowwise:  cyl
#>     cyl   `3`   `4`   `5` gear_total
#>   <dbl> <int> <int> <int>      <int>
#> 1     4     1     8     2         11
#> 2     6     2     4     1          7
#> 3     8    12     0     2         14

# total as row
cyl_gear_sum %>% 
  pivot_longer(-cyl, names_to = "gear", values_to = "n")
#> # A tibble: 12 x 3
#>      cyl gear           n
#>    <dbl> <chr>      <int>
#>  1     4 3              1
#>  2     4 4              8
#>  3     4 5              2
#>  4     4 gear_total    11
#>  5     6 3              2
#>  6     6 4              4
#>  7     6 5              1
#>  8     6 gear_total     7
#>  9     8 3             12
#> 10     8 4              0
#> 11     8 5              2
#> 12     8 gear_total    14

Created on 2020-04-07 by the reprex package (v0.3.0)

| |
0

If you would like to have truly universal solution you could use a combination of purrr::map_df, base::c and base::sum mtcars %>% purrr::map_df(~c(.x, sum(.x, na.rm=TRUE))) %>% tail

P.S. All columns must be numeric!

| |

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.