12

When using dplyr's "group_by" and "mutate", if I understand correctly, the data frame is split in different sub-dataframes according to the group_by argument. For example, with the following code :

 set.seed(7)
 df <- data.frame(x=runif(10),let=rep(letters[1:5],each=2))
 df %>% group_by(let) %>% mutate(mean.by.letter = mean(x))

mean() is applied successively to the column x of 5 sub-dfs corresponding to a letter between a & e.

So you can manipulate the columns of the sub-dfs but can you access the sub-dfs themselves ? To my surprise, if I try :

 set.seed(7)
 data <- data.frame(x=runif(10),let=rep(letters[1:5],each=2))
 data %>% group_by(let) %>% mutate(mean.by.letter = mean(.$x))

the result is different. From this result, one can infer that the "." df doesn't represent successively the sub-dfs but just the "data" one (the group_by function doens't change anything).
The reason is that I want to use a stat function that take a data frame as an arguments on each of this sub-dfs. Thanks !

4
  • You could try with ?do
    – akrun
    Apr 11 '16 at 14:36
  • 1
    do.call(rbind, lapply(split(df, df$let), myfun))
    – Frank
    Apr 11 '16 at 14:46
  • I don't understand the question since the accepted answer produces the same as data %>% group_by(let) %>% mutate(mean.by.letter = mean(x)) (unless I'm missing something) but will likely be slower because of the extra do-call
    – talat
    Apr 11 '16 at 15:57
  • @docendo-discimus : sorry, if it wasn't clear but I didn't want to make it too long, so I used an over simplified exemple. And, you're right, in this simple case, I could have the simpler solution (ie the one that you repeat). But as I tried to explain in the end of my question, it is not possible to use the same solution once you need to the whole sub-dataframes as an argument of your stat function (and not just one of their column like with the x in mean()...)
    – godot
    Apr 11 '16 at 16:35
10

We can use within do

data %>%
    group_by(let ) %>% 
    do(mutate(., mean.by.letter = mean(.$x)))
7
  • @Franck : Thanks Akrun & Frank, it works fine! I used the function "do" in my solution but not the mutate one and that what was missing ! I have to say I am a bit puzzled by the "why". Do you know any advanced papers / books on how things work behind the scene ? Do you have any explanations ?
    – godot
    Apr 11 '16 at 15:39
  • @godot it needs a data.frame output within the do. So, if you are not using mutate, it needs a data.frame call explicitly inside do, but it will give you only a single value per each group i.e. summarise..
    – akrun
    Apr 11 '16 at 15:56
  • Thanks. Actually, it is not the do() part that I don't understand, it is the "dot" part in the mutate() function of my 1st exemple : how come the output of group_by (so the "." of mutate) is the same data.frame as its input ? And how does mean() "knows" that the var x is the column of the sub-dfs and not the main one ?
    – godot
    Apr 11 '16 at 16:44
  • @godot the . is selecting the data.frame as such and mutate create the new column mean.by.letter by taking the mean of the extracted column 'x'
    – akrun
    Apr 12 '16 at 2:50
  • 1
    @godot The difference I guess is that in the first case, you are extracting the column 'x' from the "data" i.e. mean(.$x) is literally similar to mean(data$x) which doesn't take into account the subdataset split whereas in the do envrionment, when you are doing mean(.$x) the . is the subdataset and .$x is the column extracted from subdf.
    – akrun
    Apr 12 '16 at 7:49
3

Since dplyr 0.8 you can use group_map, the . in the group_map call will represent the sub-data.frame. Its behavior has changed a bit with time, with dplyr 1.0 we can do

df <- data.frame(x=runif(10),let=rep(letters[1:5],each=2))
library(dplyr)
#> 
#> Attaching package: 'dplyr'
#> The following objects are masked from 'package:stats':
#> 
#>     filter, lag
#> The following objects are masked from 'package:base':
#> 
#>     intersect, setdiff, setequal, union
df %>%   
  group_by(let) %>%
  group_map(~mutate(., mean.by.letter = mean(x)), .keep = T) %>%  
  bind_rows()
#> # A tibble: 10 x 3
#>         x let   mean.by.letter
#>     <dbl> <chr>          <dbl>
#>  1 0.442  a              0.271
#>  2 0.0999 a              0.271
#>  3 0.669  b              0.343
#>  4 0.0167 b              0.343
#>  5 0.908  c              0.575
#>  6 0.242  c              0.575
#>  7 0.685  d              0.378
#>  8 0.0716 d              0.378
#>  9 0.883  e              0.843
#> 10 0.804  e              0.843

group_map() was introduced there (with now outdated behavior!):

https://www.tidyverse.org/articles/2019/02/dplyr-0-8-0/ https://www.tidyverse.org/articles/2018/12/dplyr-0-8-0-release-candidate/

2
  • Thx! Could you add a link to the doc explaining that ?
    – godot
    Feb 19 '19 at 13:18
  • @GeoffreyPoole you're correct, the behavior changed, no need to use do.call though, bind_rows is enough, and undotted keep is deprecated since dplyr 1.0, better use .keep. Thanks a lot for the correction! Jun 15 '20 at 0:01

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