ddply for transforming data

I've the following test data frame.

``````id1 val
A 1
A 1
A 1
A 1
B 2
B 2
B 2
B 2
``````

I would like to transform it to a data frame as shown below.

``````id1 val
A 1
A 1
A 2
A 2
B 3
B 3
B 4
B 4
``````

What I've done is to first find the count of the number of times A & B occur, in this case = 4, split that into 2 and then update the second column so that it gets incremented accordingly. So the four 1's have become 1,2, the four 2's have become 3,4 and so on. I know this fits the SAC paradigm, but wondering how to do it with ddply. Any suggestions please? Thanks much in advance

-

1 Answer

First, let's get your sample object:

``````d <- data.frame( id1= c(rep("A",4), rep("B",4)),  val=c(rep("1",4), rep("2",4)) )
``````

A convenient way to do what you seem to want would simply be to do:

``````> d\$val <- rep( 1:(nrow(d)/2), each=2)
> d
id1 val
1   A   1
2   A   1
3   A   2
4   A   2
5   B   3
6   B   3
7   B   4
8   B   4
``````

And that's it.

A reason to use a split-apply-combine approach would be to have a numbering that specifically depends on the combinations of column values, for instance. With `ddply` you could split rows according to `id1` and `val`, and for get a different type of numbering:

``````f <- function(x){ rep(1:(length(x)/2), each=2) }
ddply(d, .(id1), transform, val = f(val) )

id1 val
1   A   1
2   A   1
3   A   2
4   A   2
5   B   1
6   B   1
7   B   2
8   B   2
``````

Working on the definition of `f`and doing the arithmetics would certainly lead you to a solution, but if the following assumptions describe what you want:

• an increment of +1 every 2 rows
• A and B always occur in even numbers

then I don't see the point... applying `rep(x, each=2)` to `d` does the job!

-