20

If I add a new row to the iris dataset with:

iris <- as_tibble(iris)

> iris %>% 
    add_row(.before=0)

# A tibble: 151 × 5
    Sepal.Length Sepal.Width Petal.Length Petal.Width Species
          <dbl>       <dbl>        <dbl>       <dbl>   <chr>
1            NA          NA           NA          NA    <NA> <--- Good!
2           5.1         3.5          1.4         0.2  setosa
3           4.9         3.0          1.4         0.2  setosa

It works. So, why can't I add a new row on top of each "subset" with:

iris %>% 
 group_by(Species) %>% 
 add_row(.before=0)

Error: is.data.frame(df) is not TRUE
3
  • 5
    Upgrade your version of tibble, that error message is at least three months old. (The new error message says "Cannot add rows to grouped data frames", which answers your question of why it is not working.)
    – r2evans
    Apr 13 '17 at 23:55
  • 16
    You can use do to add row to each group: iris %>% group_by(Species) %>% do(add_row(., .before=0)).
    – JasonWang
    Apr 14 '17 at 0:00
  • Thanks JasonWang and r2evans. I've updated my packages and using do() does the trick.
    – Dan
    Apr 15 '17 at 14:30
18

If you want to use a grouped operation, you need do like JasonWang described in his comment, as other functions like mutate or summarise expect a result with the same number of rows as the grouped data frame (in your case, 50) or with one row (e.g. when summarising).

As you probably know, in general do can be slow and should be a last resort if you cannot achieve your result in another way. Your task is quite simple because it only involves adding extra rows in your data frame, which can be done by simple indexing, e.g. look at the output of iris[NA, ].

What you want is essentially to create a vector

indices <- c(NA, 1:50, NA, 51:100, NA, 101:150)

(since the first group is in rows 1 to 50, the second one in 51 to 100 and the third one in 101 to 150).

The result is then iris[indices, ].

A more general way of building this vector uses group_indices.

indices <- seq(nrow(iris)) %>% 
    split(group_indices(iris, Species)) %>% 
    map(~c(NA, .x)) %>%
    unlist

(map comes from purrr which I assume you have loaded as you have tagged this with tidyverse).

1
  • 1
    Wow. Thanks for the thorough answer @konvas. FYI, no I didn't know do is slow and was not aware of the alternative with purrr/map. This is what makes SO great. Now I know where to look for answers to this problem. Thanks
    – Dan
    Apr 15 '17 at 14:28
6

A more recent version would be using group_modify() instead of do().

iris %>%
  as_tibble() %>%
  group_by(Species) %>% 
  group_modify(~ add_row(.x,.before=0))
#> # A tibble: 153 x 5
#> # Groups:   Species [3]
#>    Species Sepal.Length Sepal.Width Petal.Length Petal.Width
#>    <fct>          <dbl>       <dbl>        <dbl>       <dbl>
#>  1 setosa          NA          NA           NA          NA  
#>  2 setosa           5.1         3.5          1.4         0.2
#>  3 setosa           4.9         3            1.4         0.2
1
  • This should be used now instead of the do call proposed by @JasonWang in the OP's comments. group_modify preserves the group name when creating the new row whereas do does not, giving the user a value of NA for the grouped variable.
    – hmhensen
    Aug 9 '21 at 23:28
2

With a slight variation, this could also be done:

library(purrr)
library(tibble)

iris %>%
  group_split(Species) %>%
  map_dfr(~ .x %>%
            add_row(.before = 1))

# A tibble: 153 x 5
   Sepal.Length Sepal.Width Petal.Length Petal.Width Species
          <dbl>       <dbl>        <dbl>       <dbl> <fct>  
 1         NA          NA           NA          NA   NA     
 2          5.1         3.5          1.4         0.2 setosa 
 3          4.9         3            1.4         0.2 setosa 
 4          4.7         3.2          1.3         0.2 setosa 
 5          4.6         3.1          1.5         0.2 setosa 
 6          5           3.6          1.4         0.2 setosa 
 7          5.4         3.9          1.7         0.4 setosa 
 8          4.6         3.4          1.4         0.3 setosa 
 9          5           3.4          1.5         0.2 setosa 
10          4.4         2.9          1.4         0.2 setosa 
# ... with 143 more rows

This also can be used for grouped data frame, however, it's a bit verbose:

library(dplyr)

iris %>%
  group_by(Species) %>%
  summarise(Sepal.Length = c(NA, Sepal.Length), 
            Sepal.Width = c(NA, Sepal.Width), 
            Petal.Length = c(NA, Petal.Length),
            Petal.Width = c(NA, Petal.Width), 
            Species = c(NA, Species))

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.