Here's a solution using `tapply`

using @Ricardo's data:

```
# data (thanks @Ricardo)
set.seed(1234)
mydata <- data.frame(d1=strsplit("AAABBCCCCCDD", "")[[1]],
d2=rnorm(12), d3=LETTERS[1:12],
d4=c(101:103, 201:202, 301:305, 401:402))
# solution
idx <- unlist(tapply(seq_len(nrow(mydata)), mydata$d1, function(x) x[length(x)-1]))
mydata[idx, ]
# d1 d2 d3 d4
# 2 A 0.2774292 B 102
# 4 B -2.3456977 D 201
# 9 C -0.5644520 I 304
# 11 D -0.4771927 K 401
```

The `unlist`

is required in case there's just 1 row for a particular value for `id1`

.

### What does the code do?

I'll explain as good as I can by breaking the function. Looking at the line `idx <- ...`

, the function `tapply`

splits the sequence `c(1, 2, ... nrow(mydata))`

(here, `nrow(mydata) = 12`

) by the column `mydata$d1`

. That is:

```
tapply(1:12, mydata$d1, c) # just to show what happens here
$A
[1] 1 2 3
$B
[1] 4 5
$C
[1] 6 7 8 9 10
$D
[1] 11 12
```

Now, instead of the function `c`

we need the *last-but-one* element of each of these elements. So, we create a `function(x) x[length(x)-1]`

where each of these `A, B, C, D`

is passed one by one and the code `x[length(x)-1]`

selects the *last-but-one* element **each time**. These give you the *row index* of *all* penultimate rows. So, just subset the data.frame by `mydata[idx, ]`

.

`d1`

or`d4`

in your example. – Arun May 7 '13 at 16:13