I'm trying to use the dplyr package to apply a function to all columns in a data.frame that are not being grouped, which I would do with aggregate():

aggregate(. ~ Species, data = iris, mean)

where mean is applied to all columns not used for grouping. (Yes, I know I can use aggregate, but I'm trying to understand dplyr.)

I can use summarize like this:

species <- group_by(iris, Species)
summarize(species,
          Sepal.Length = mean(Sepal.Length),
          Sepal.Width = mean(Sepal.Width))

But is there a way to have mean() applied to all columns that are not grouped, similar to the . ~ notation of aggregate()? I have a data.frame with 30 columns that I want to aggregate, so writing out the individual statements is not ideal.

up vote 34 down vote accepted

If you're willing to try out an experimental dplyr, you can try out the new (and still experimental) summarise_each():

devtools::install_github("hadley/dplyr", ref = "colwise")

library(dplyr)
iris %.%
  group_by(Species) %.%
  summarise_each(funs(mean))
## Source: local data frame [3 x 5]
## 
##      Species Sepal.Length Sepal.Width Petal.Length Petal.Width
## 1     setosa        5.006       3.428        1.462       0.246
## 2 versicolor        5.936       2.770        4.260       1.326
## 3  virginica        6.588       2.974        5.552       2.026

iris %.%
  group_by(Species) %.%
  summarise_each(funs(min, max))
## Source: local data frame [3 x 9]
## 
##      Species Sepal.Length_min Sepal.Width_min Petal.Length_min
## 1     setosa              4.3             2.3              1.0
## 2 versicolor              4.9             2.0              3.0
## 3  virginica              4.9             2.2              4.5
## Variables not shown: Petal.Width_min (dbl), Sepal.Length_max (dbl),
##   Sepal.Width_max (dbl), Petal.Length_max (dbl), Petal.Width_max (dbl)

Feedback much appreciated!

This will appear in dplyr 0.2.

  • Works perfectly for me. Even returns NaN for groups that are all missing data. – kmm Mar 25 '14 at 21:58
  • I can't replicate the error on the iris data sets. But i have data that that gives true when I do all(a$date == a$CALENDAR_YEAR_MONTH). But doing group_by(a, date) %.% summarise_each(funs(median = median(.,na.rm=T), mean)) gives Error in [.data.table(dt, , list(median = median(CALENDAR_YEAR_MONTH, : Column 1 of result for group 4 is type 'integer' but expecting type 'double'. Column types must be consistent for each group. – xiaodai Aug 19 '14 at 5:14
  • 1
    fyi, summarize_each() has been deprecated in favor of summarize_all() – slizb May 24 at 14:42

This will get you almost all the way in dplyr.

h = iris %.%
  group_by(Species) %.%
  do(function(d){
    sapply(Filter(is.numeric, d), mean)  
  })

as.data.frame(h)
  • I wouldn't recommend using do() in that way, as it's likely to change in 0.2 – hadley Mar 25 '14 at 20:14
  • 2
    Is there an idiomatic way to do it in dplyr? In data.table I can do data.table(iris)[,lapply(.SD, mean),Species]. – Ramnath Mar 26 '14 at 1:48

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