I need to get the mean of all columns of a large data set using R, grouped by 2 variables.
Lets try it with mtcars:
library(dplyr)
g_mtcars <- group_by(mtcars, cyl, gear)
summarise(g_mtcars, mean (hp))
# Source: local data frame [8 x 3]
# Groups: cyl [?]
#
# cyl gear `mean(hp)`
# <dbl> <dbl> <dbl>
# 1 4 3 97.0000
# 2 4 4 76.0000
# 3 4 5 102.0000
# 4 6 3 107.5000
# 5 6 4 116.5000
# 6 6 5 175.0000
# 7 8 3 194.1667
# 8 8 5 299.5000
It works for "hp", but I need to get the mean for every other columns of mtcars (except "cyl" and "gear" that make a group).
The data set is large, with several columns. Typing it by hand, like this: summarise(g_mtcars, mean (hp), mean(drat), mean (wt),...)
is not practical.
Edit2: Recent version of dplyr
suggests using regular summarise
with across
function, as in:
library(dplyr)
mtcars %>%
group_by(cyl, gear) %>%
summarise(across(everything(), mean))
What you're looking for is either ?summarise_all
or ?summarise_each
from dplyr
Edit: full code:
library(dplyr)
mtcars %>%
group_by(cyl, gear) %>%
summarise_all("mean")
# Source: local data frame [8 x 11]
# Groups: cyl [?]
#
# cyl gear mpg disp hp drat wt qsec vs am carb
# <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
# 1 4 3 21.500 120.1000 97.0000 3.700000 2.465000 20.0100 1.0 0.00 1.000000
# 2 4 4 26.925 102.6250 76.0000 4.110000 2.378125 19.6125 1.0 0.75 1.500000
# 3 4 5 28.200 107.7000 102.0000 4.100000 1.826500 16.8000 0.5 1.00 2.000000
# 4 6 3 19.750 241.5000 107.5000 2.920000 3.337500 19.8300 1.0 0.00 1.000000
# 5 6 4 19.750 163.8000 116.5000 3.910000 3.093750 17.6700 0.5 0.50 4.000000
# 6 6 5 19.700 145.0000 175.0000 3.620000 2.770000 15.5000 0.0 1.00 6.000000
# 7 8 3 15.050 357.6167 194.1667 3.120833 4.104083 17.1425 0.0 0.00 3.083333
# 8 8 5 15.400 326.0000 299.5000 3.880000 3.370000 14.5500 0.0 1.00 6.000000