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 %>% 
   add_count(name, type)
  • 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
up vote 0 down vote accepted

Another way that generalizes more:

df$count <- unsplit(lapply(split(df, df[c("name","type")]), nrow), df[c("name","type")])
  • 6
    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).

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.