# Apply several summary functions (sum, mean, etc.) on several variables by group in one call

I have the following data frame

``````x <- read.table(text = "  id1 id2 val1 val2
1   a   x    1    9
2   a   x    2    4
3   a   y    3    5
4   a   y    4    9
5   b   x    1    7
6   b   y    4    4
7   b   x    3    9
8   b   y    2    8", header = TRUE)
``````

I want to calculate the mean of val1 and val2 grouped by id1 and id2, and simultaneously count the number of rows for each id1-id2 combination. I can perform each calculation separately:

``````# calculate mean
aggregate(. ~ id1 + id2, data = x, FUN = mean)

# count rows
aggregate(. ~ id1 + id2, data = x, FUN = length)
``````

In order to do both calculations in one call, I tried

``````do.call("rbind", aggregate(. ~ id1 + id2, data = x, FUN = function(x) data.frame(m = mean(x), n = length(x))))
``````

However, I get a garbled output along with a warning:

``````#     m   n
# id1 1   2
# id2 1   1
#     1.5 2
#     2   2
#     3.5 2
#     3   2
#     6.5 2
#     8   2
#     7   2
#     6   2
# Warning message:
#   In rbind(id1 = c(1L, 2L, 1L, 2L), id2 = c(1L, 1L, 2L, 2L), val1 = list( :
#   number of columns of result is not a multiple of vector length (arg 1)
``````

I could use the plyr package, but my data set is quite large and plyr is very slow (almost unusable) when the size of the dataset grows.

How can I use `aggregate` or other functions to perform several calculations in one call?

• Beside `aggregate` mentioned in the answers there are also `by` and `tapply`. Aug 22, 2012 at 11:48

You can do it all in one step and get proper labeling:

``````> aggregate(. ~ id1+id2, data = x, FUN = function(x) c(mn = mean(x), n = length(x) ) )
#   id1 id2 val1.mn val1.n val2.mn val2.n
# 1   a   x     1.5    2.0     6.5    2.0
# 2   b   x     2.0    2.0     8.0    2.0
# 3   a   y     3.5    2.0     7.0    2.0
# 4   b   y     3.0    2.0     6.0    2.0
``````

This creates a dataframe with two id columns and two matrix columns:

``````str( aggregate(. ~ id1+id2, data = x, FUN = function(x) c(mn = mean(x), n = length(x) ) ) )
'data.frame':   4 obs. of  4 variables:
\$ id1 : Factor w/ 2 levels "a","b": 1 2 1 2
\$ id2 : Factor w/ 2 levels "x","y": 1 1 2 2
\$ val1: num [1:4, 1:2] 1.5 2 3.5 3 2 2 2 2
..- attr(*, "dimnames")=List of 2
.. ..\$ : NULL
.. ..\$ : chr  "mn" "n"
\$ val2: num [1:4, 1:2] 6.5 8 7 6 2 2 2 2
..- attr(*, "dimnames")=List of 2
.. ..\$ : NULL
.. ..\$ : chr  "mn" "n"
``````

As pointed out by @lord.garbage below, this can be converted to a dataframe with "simple" columns by using `do.call(data.frame, ...)`

``````str( do.call(data.frame, aggregate(. ~ id1+id2, data = x, FUN = function(x) c(mn = mean(x), n = length(x) ) ) )
)
'data.frame':   4 obs. of  6 variables:
\$ id1    : Factor w/ 2 levels "a","b": 1 2 1 2
\$ id2    : Factor w/ 2 levels "x","y": 1 1 2 2
\$ val1.mn: num  1.5 2 3.5 3
\$ val1.n : num  2 2 2 2
\$ val2.mn: num  6.5 8 7 6
\$ val2.n : num  2 2 2 2
``````

This is the syntax for multiple variables on the LHS:

``````aggregate(cbind(val1, val2) ~ id1 + id2, data = x, FUN = function(x) c(mn = mean(x), n = length(x) ) )
``````
• Thanks much. As a side note, how do I get aggregate to sum up just one column. If I have several numerical columns, I don't want it summing columns I don't want it to. I could of course throw away the columns after the aggregation is done, but the CPU cycles would already be spent then. Aug 21, 2012 at 23:45
• You only give it the factors to be grouped on and the columns to be aggregated. Possibly use negative column indexing in data or put the columns you want on the LHS of the formula. (See edit.) Aug 21, 2012 at 23:55
• I encountered the bug that user2659402 mentioned in his update while using RStudio 0.98.1014 on a windows 7 machine. If you output the data frame to the console as shown it appears normal, however if you save it into d, and then try to access d\$val1.mn, it returns NULL. d also appears malformed if you run view(d). Using the code in the update fixed it. Oct 27, 2014 at 17:04
• The reason you are having difficulty is that the "vals" are being returned as matrices with two columns each, rather than as ordinary columns. Try `d\$val1[ , ""mn"]` and do look at the structure with `str`. Oct 27, 2014 at 17:31
• You can bind the columns which contain matrices back into the data frame: `agg <- aggregate(cbind(val1, val2) ~ id1 + id2, data = x, FUN = function(x) c(mn = mean(x), n = length(x)))` by using `agg_df <- do.call(data.frame, agg)`. See also here. Oct 29, 2014 at 13:00

Given this in the question :

I could use the plyr package, but my data set is quite large and plyr is very slow (almost unusable) when the size of the dataset grows.

Then in `data.table` (`1.9.4+`) you could try :

``````> DT
id1 id2 val1 val2
1:   a   x    1    9
2:   a   x    2    4
3:   a   y    3    5
4:   a   y    4    9
5:   b   x    1    7
6:   b   y    4    4
7:   b   x    3    9
8:   b   y    2    8

> DT[ , .(mean(val1), mean(val2), .N), by = .(id1, id2)]   # simplest
id1 id2  V1  V2 N
1:   a   x 1.5 6.5 2
2:   a   y 3.5 7.0 2
3:   b   x 2.0 8.0 2
4:   b   y 3.0 6.0 2

> DT[ , .(val1.m = mean(val1), val2.m = mean(val2), count = .N), by = .(id1, id2)]  # named
id1 id2 val1.m val2.m count
1:   a   x    1.5    6.5     2
2:   a   y    3.5    7.0     2
3:   b   x    2.0    8.0     2
4:   b   y    3.0    6.0     2

> DT[ , c(lapply(.SD, mean), count = .N), by = .(id1, id2)]   # mean over all columns
id1 id2 val1 val2 count
1:   a   x  1.5  6.5     2
2:   a   y  3.5  7.0     2
3:   b   x  2.0  8.0     2
4:   b   y  3.0  6.0     2
``````

For timings comparing `aggregate` (used in question and all 3 other answers) to `data.table` see this benchmark (the `agg` and `agg.x` cases).

Using the `dplyr` package you could achieve this by using `summarise_all`. With this summarise-function you can apply other functions (in this case `mean` and `n()`) to each of the non-grouping columns:

``````x %>%
group_by(id1, id2) %>%
summarise_all(funs(mean, n()))
``````

which gives:

``````     id1    id2 val1_mean val2_mean val1_n val2_n
1      a      x       1.5       6.5      2      2
2      a      y       3.5       7.0      2      2
3      b      x       2.0       8.0      2      2
4      b      y       3.0       6.0      2      2
``````

If you don't want to apply the function(s) to all non-grouping columns, you specify the columns to which they should be applied or by excluding the non-wanted with a minus using the `summarise_at()` function:

``````# inclusion
x %>%
group_by(id1, id2) %>%
summarise_at(vars(val1, val2), funs(mean, n()))

# exclusion
x %>%
group_by(id1, id2) %>%
summarise_at(vars(-val2), funs(mean, n()))
``````

You could add a `count` column, aggregate with `sum`, then scale back to get the `mean`:

``````x\$count <- 1
agg <- aggregate(. ~ id1 + id2, data = x,FUN = sum)
agg
#   id1 id2 val1 val2 count
# 1   a   x    3   13     2
# 2   b   x    4   16     2
# 3   a   y    7   14     2
# 4   b   y    6   12     2

agg[c("val1", "val2")] <- agg[c("val1", "val2")] / agg\$count
agg
#   id1 id2 val1 val2 count
# 1   a   x  1.5  6.5     2
# 2   b   x  2.0  8.0     2
# 3   a   y  3.5  7.0     2
# 4   b   y  3.0  6.0     2
``````

It has the advantage of preserving your column names and creating a single `count` column.

Perhaps you want to merge?

``````x.mean <- aggregate(. ~ id1+id2, p, mean)
x.len  <- aggregate(. ~ id1+id2, p, length)

merge(x.mean, x.len, by = c("id1", "id2"))

id1 id2 val1.x val2.x val1.y val2.y
1   a   x    1.5    6.5      2      2
2   a   y    3.5    7.0      2      2
3   b   x    2.0    8.0      2      2
4   b   y    3.0    6.0      2      2
``````

You can also use the `plyr::each()` to introduce multiple functions:

``````aggregate(cbind(val1, val2) ~ id1 + id2, data = x, FUN = plyr::each(avg = mean, n = length))
``````

After `dplyr` version 1.0.0, the above `summarize_all` and `summarize_at` functions were superseded by `summarize(across(...))`, where you can select columns to operate on (`val1:val2` here).

We can also supply a list of functions in `across`, and set column names with glue specification (`{.col}` = original column name, `{.fn}` = function name in the list).

More information of `across` can be found in the official documentation.

``````library(dplyr)

x %>% group_by(id1, id2) %>%
summarize(across(val1:val2, list(mean = mean, n = length), .names = "{.col}_{.fn}"))

# A tibble: 4 × 6
# Groups:   id1 [2]
id1   id2   val1_mean val1_n val2_mean val2_n
<chr> <chr>     <dbl>  <int>     <dbl>  <int>
1 a     x           1.5      2       6.5      2
2 a     y           3.5      2       7        2
3 b     x           2        2       8        2
4 b     y           3        2       6        2
``````