# How to assign a counter to a specific subset of a data.frame which is defined by a factor combination?

My question is: I have a data frame with some factor variables. I now want to assign a new vector to this data frame, which creates an index for each subset of those factor variables.

``````   data <-data.frame(fac1=factor(rep(1:2,5)), fac2=sample(letters[1:3],10,rep=T))
``````

Gives me something like:

``````        fac1 fac2
1     1    a
2     2    c
3     1    b
4     2    a
5     1    c
6     2    b
7     1    a
8     2    a
9     1    b
10    2    c
``````

And what I want is a combination counter which counts the occurrence of each factor combination. Like this

``````        fac1 fac2  counter
1     1    a        1
2     2    c        1
3     1    b        1
4     2    a        1
5     1    c        1
6     2    b        1
7     1    a        2
8     2    a        2
9     1    b        2
10    1    a        3
``````

So far I thought about using tapply to get the counter over all factor-combinations, which works fine

``````counter <-tapply(data\$fac1, list(data\$fac1,data\$fac2), function(x) 1:length(x))
``````

But I do not know how I can assign the counter list (e.g. unlisted) to the combinations in the data-frame without using inefficient looping :)

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Does it need to be in order or do you just want net counts? If you just want counts, table(paste(data\$fac1,data\$fac2,sep="-")) might help. – screechOwl Oct 25 '12 at 15:23
Hi! Within each fac1 x fac2 combination the order matters. (One can think of it as times a person "fac1" saw the letter "fac2") – JBJ Oct 25 '12 at 15:32
You could use the same basic strategy, but switch from `tapply` to either `ddply` from plyr, or if your data is huge and performance is an issue, `data.table`. – joran Oct 25 '12 at 15:37
possible duplicate of numbering rows within groups in a data frame – mnel Oct 25 '12 at 22:36

## 4 Answers

This is a job for the `ave()` function:

``````# Use set.seed for reproducible examples
#   when random number generation is involved
set.seed(1)
myDF <- data.frame(fac1 = factor(rep(1:2, 7)),
fac2 = sample(letters[1:3], 14, replace = TRUE),
stringsAsFactors=FALSE)
myDF\$counter <- ave(myDF\$fac2, myDF\$fac1, myDF\$fac2, FUN = seq_along)
myDF
#    fac1 fac2 counter
# 1     1    a       1
# 2     2    b       1
# 3     1    b       1
# 4     2    c       1
# 5     1    a       2
# 6     2    c       2
# 7     1    c       1
# 8     2    b       2
# 9     1    b       2
# 10    2    a       1
# 11    1    a       3
# 12    2    a       2
# 13    1    c       2
# 14    2    b       3
``````

Note the use of `stringsAsFactors=FALSE` in the `data.frame()` step. If you didn't have that, you can still get the output with: `myDF\$counter <- ave(as.character(myDF\$fac2), myDF\$fac1, myDF\$fac2, FUN = seq_along)`.

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It most certainly is, +1 – Matthew Plourde Oct 25 '12 at 15:54
Great answer!!!! +1 – Jilber Oct 25 '12 at 16:18
Compared mrdwab and my solution in terms of efficiency (could not get @mplourde to work) and the mrdwab is twice as fast. For 1000000 lines it is 1.693 vs. 3.382 sec – vaettchen Oct 25 '12 at 16:32
perfect, thanks a lot! – JBJ Oct 25 '12 at 16:32

A data.table solution

``````library(data.table)
DT <- data.table(data)
DT[, counter := seq_len(.N), by = list(fac1, fac2)]
``````
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This is a base R way that avoids (explicit) looping.

``````data\$counter <- with(data, {
inter <- as.character(interaction(fac1, fac2))
names(inter) <- seq_along(inter)
inter.ordered <- inter[order(inter)]
counter <- with(rle(inter.ordered), unlist(sapply(lengths, sequence)))
counter[match(names(inter), names(inter.ordered))]
})
``````
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Here a variant with a little looping (I have renamed your variable to "x" since "data" is being used otherwise):

``````x <-data.frame(fac1=rep(1:2,5), fac2=sample(letters[1:3],10,rep=T))
x\$fac3 <- paste( x\$fac1, x\$fac2, sep="" )
x\$ctr <- 1
y <- table( x\$fac3 )
for( i in 1 : length( rownames( y ) ) )
x\$ctr[x\$fac3 == rownames(y)[i]] <- 1:length( x\$ctr[x\$fac3 == rownames(y)[i]] )
x <- x[-3]
``````

No idea whether this is efficient over a large data.frame but it works!

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