# Count number of observations/rows per group and add result to data frame

Say I have a `data.frame` object:

``````df <- data.frame(name=c('black','black','black','red','red'),
type=c('chair','chair','sofa','sofa','plate'),
num=c(4,5,12,4,3))
``````

Now I want to count the number of observation of for each combination of `name` and `type`. This can be done like so:

``````table(df[ , c("name","type")])
``````

or possibly also with `plyr`, (though I am not sure how).

However, how do I get the results incorporated into the original data frame? So that the results will look like this:

``````df
#    name  type num count
# 1 black chair   4     2
# 2 black chair   5     2
# 3 black  sofa  12     1
# 4   red  sofa   4     1
# 5   red plate   3     1
``````

where `count` now stores the results from the aggregation.

A solution with `plyr` could be interesting to learn as well, though I would like to see how this is done with base R.

Using `plyr`:

``````plyr::ddply(df, .(name, type), transform, count = length(num))
``````

Using `data.table`:

``````library(data.table)
dt = data.table(df)
# using setkey or setkeyv to set the key
setkeyv(dt, c('name', 'type'))
# self
dt[dt[ , count = length(num), 'name, type']]
``````

EDIT (mnel)

Using `data.table` version 1.8.2 or greater has `:=` by group. There is also the value `.N` (introduced version 1.6.2), which is the number of rows in the group), so it is as easy as

``````dt[ , count := .N, by = list(name, type)]
``````

Using `dplyr`:

``````library(dplyr)
df %>%
group_by(name, type) %>%
mutate(count = n())
``````

With the new version of `dplyr` (`0.6.0`)

``````df %>%
``````
• Do you need "setkeyv(dt, c('name', 'type'))"? – skan Dec 13 '16 at 19:53

You can use `ave`:

``````df\$count <- ave(df\$num, df[,c("name","type")], FUN=length)
``````

You can do this:

``````> ddply(df,.(name,type),transform,count = NROW(piece))
name  type num count
1 black chair   4     2
2 black chair   5     2
3 black  sofa  12     1
4   red plate   3     1
5   red  sofa   4     1
``````

or perhaps more intuitively,

``````> ddply(df,.(name,type),transform,count = length(num))
name  type num count
1 black chair   4     2
2 black chair   5     2
3 black  sofa  12     1
4   red plate   3     1
5   red  sofa   4     1
``````

This should do your work :

``````df_agg <- aggregate(num~name+type,df,FUN=NROW)
names(df_agg)[3] <- "count"
df <- merge(df,df_agg,by=c('name','type'),all.x=TRUE)
``````

The base `R` function `aggregate` will obtain the counts with a one-liner, but adding those counts back to the original `data.frame` seems to take a bit of processing.

``````df <- data.frame(name=c('black','black','black','red','red'),
type=c('chair','chair','sofa','sofa','plate'),
num=c(4,5,12,4,3))
df
#    name  type num
# 1 black chair   4
# 2 black chair   5
# 3 black  sofa  12
# 4   red  sofa   4
# 5   red plate   3

rows.per.group  <- aggregate(rep(1, length(paste0(df\$name, df\$type))),
by=list(df\$name, df\$type), sum)
rows.per.group
#   Group.1 Group.2 x
# 1   black   chair 2
# 2     red   plate 1
# 3   black    sofa 1
# 4     red    sofa 1

my.summary <- do.call(data.frame, rows.per.group)
colnames(my.summary) <- c(colnames(df)[1:2], 'rows.per.group')
my.data <- merge(df, my.summary, by = c(colnames(df)[1:2]))
my.data
#    name  type num rows.per.group
# 1 black chair   4              2
# 2 black chair   5              2
# 3 black  sofa  12              1
# 4   red plate   3              1
# 5   red  sofa   4              1
``````

You were just one step away from incorporating the row count into the base dataset.

Using the `tidy()` function from the `broom` package, convert the frequency table into a data frame and inner join with `df`:

``````df <- data.frame(name=c('black','black','black','red','red'),
type=c('chair','chair','sofa','sofa','plate'),
num=c(4,5,12,4,3))
library(broom)
df <- merge(df, tidy(table(df[ , c("name","type")])), by=c("name","type"))
df
name  type num Freq
1 black chair   4    2
2 black chair   5    2
3 black  sofa  12    1
4   red plate   3    1
5   red  sofa   4    1
``````

Another way that generalizes more:

``````df\$count <- unsplit(lapply(split(df, df[c("name","type")]), nrow), df[c("name","type")])
``````
• Please explain how does this generalize more? – smci Jul 18 '13 at 6:07

A two line alternative is to generate a variable of 0s and then fill it in with `split<-`, `split`, and `lengths` like this:

``````# generate vector of 0s
df\$count <-0L

# fill it in
split(df\$count, df[c("name", "type")]) <- lengths(split(df\$num, df[c("name", "type")]))
``````

This returns the desired result

``````df
name  type num count
1 black chair   4     2
2 black chair   5     2
3 black  sofa  12     1
4   red  sofa   4     1
5   red plate   3     1
``````

Essentially, the RHS calculates the lengths of each name-type combination, returning a named vector of length 6 with 0s for "red.chair" and "black.plate." This is fed to the LHS with `split <-` which takes the vector and appropriately adds the values in their given spots. This is essentially what `ave` does, as you can see that the second to final line of `ave` is

``````split(x, g) <- lapply(split(x, g), FUN)
``````

However, `lengths` is an optimized version of `sapply(list, length)`.