# numbering by groups

Suppose we have the following database:

``````ID  Shoot  hit
1     10    2
1      9    3
1      8    1
2     10    8
2      8    8
2     11   10
2      7    2
3      9    2
4      6    6
4      6    5
.
.
``````

And I would like to have it number listed in each group, in this case per ID such as:

``````ID Shoot hit number.in.group
1   10     2    1
1    9     3    2
1    8     1    3
2   10     8    1
2    8     8    2
2   11    10    3
2    7     2    4
3    9     2    1
4    6     6    1
4    6     5    2
.
.
``````

I could do it easily using a loop. Something like these would work:

``````df\$number.in.group = rep(1,nrow(df))

for(i in 2:nrow(df))
if(df\$ID[i]==df\$ID[i-1]){
df\$number.in.group[i] = df\$number.in.group[i-1] + 1 }
``````

My question is, is there any function or more elegant way of doing this other than using a loop?

-

Here's another solution

``````require(plyr)
ddply(dat, .(ID), transform, num_in_grp = seq_along(hit))
``````
-
What does val correspond to? –  AndresT Jan 26 '12 at 8:18
`val` corresponds to `hit`. see edited answer –  Ramnath Jan 26 '12 at 12:12

If you want a one-liner, something like

``````df\$number.in.group = unlist(lapply(table(df\$ID),seq.int))
``````
-
That's pretty close to the code for `sequence`, no? –  joran Jan 25 '12 at 4:18
Well, `sequence(X)` is defined as `unlist(lapply(X,seq_len))` so, yes, you can write it as `sequence(table(df\$ID))` - I just prefer to use direct functions and not wrappers - saves time ;) [and fewer functions to remember :P]. –  Simon Urbanek Jan 25 '12 at 4:30
You're like Neo; you think in terms of the source code! –  joran Jan 25 '12 at 4:34
Believe me, when you're hacking on R, you have to ;) –  Simon Urbanek Jan 25 '12 at 4:35
Is there a similar advantage to `unlist(lapply())` over `sapply()`? –  Josh O'Brien Jan 25 '12 at 4:35
show 1 more comment

You could just use `rle` and `sequence`:

``````dat <- read.table(text = "ID  Shoot  hit
+ 1     10    2
+ 1      9    3
+ 1      8    1
+ 2     10    8
+ 2      8    8
+ 2     11   10
+ 2      7    2
+ 3      9    2
+ 4      6    6
+ 4      6    5",sep = "",header = TRUE)

> sequence(rle(dat\$ID)\$lengths)
[1] 1 2 3 1 2 3 4 1 1 2
``````

Indeed, I think `sequence` is intended for exactly this purpose.

-
``````> dat\$number.in.group <- ave(dat\$ID,dat\$ID, FUN=seq_along)
> dat
ID Shoot hit number.in.group
1   1    10   2               1
2   1     9   3               2
3   1     8   1               3
4   2    10   8               1
5   2     8   8               2
6   2    11  10               3
7   2     7   2               4
8   3     9   2               1
9   4     6   6               1
10  4     6   5               2
``````
-

There are probably better ways but one could use tapply on the IDs and toss in a function that returns a sequence.

``````# Example data
dat <- data.frame(ID = rep(1:3, c(2, 3, 5)), val = rnorm(10))

# Using tapply with a function that returns a sequence
dat\$number.in.group <- unlist(tapply(dat\$ID, dat\$ID, function(x){seq(length(x))}))
dat
``````

which results in

``````> dat
ID          val number.in.group
1   1 -0.454652118               1
2   1 -2.391824247               2
3   2  0.530832021               1
4   2 -1.671043812               2
5   2 -0.045261549               3
6   3  2.311162484               1
7   3 -0.525635803               2
8   3  0.008588811               3
9   3  0.078942033               4
10  3  0.324156111               5
``````
-
``````df\$number.in.group <- unlist(lapply(as.vector(unlist(rle(df\$ID)[1])), function(x) 1:x))
``````
-
Rats I see joran beat me too the rle solution and more efficiently –  Tyler Rinker Jan 25 '12 at 4:18

I compared your anwsers and IShouldBuyABoat is the most promissing. I found that function ave could be applied even if dataset is not sorted according to the grouping variable.

Let consider dataset:

``````dane<-data.frame(g1=c(-1,-2,-2,-2,-3,-3,-3,-3,-3),
g2=c('reg','pl','reg','woj','woj','reg','woj','woj','woj'))
``````

Joran anwser and applied to my example:

``````> sequence(rle(as.character(dane\$g2))\$lengths)
[1] 1 1 1 1 2 1 1 2 3
``````

Simon Urbanek proposition and results:

``````> unlist(lapply(table(dane\$g2),seq.int))
pl reg1 reg2 reg3 woj1 woj2 woj3 woj4 woj5
1    1    2    3    1    2    3    4    5
``````

``````> as.numeric(ave(as.character(dane\$g1),as.character(dane\$g1),FUN=seq_along))