# Getting all possible two column subsets

I am a relative newbie to R and I am now very close to being finished with a rather long script with many thanks to everyone who helped me thus far at various steps. I have another point I am stuck on. I have simplified the issue to this:

``````Dataset1
ax ay
1  3
2  4

Dataset2
bx by
5   7
6   8

A <- dataset1
B <- dataset2
a <- 2 #number of columns
b <- 1:2
``````

(my datasets will vary in number of columns and so I need to be able to vary this factor)

I want this answer in any order (i.e. all possible combinations of two columns one from each of the two datasets) like this or equivalent.

``````[[1]]
1  5
2  6

[[2]]
1  7
2  8

[[3]]
3  5
4  6

[[4]]
3  7
4  8
``````

But I am not getting it. I tried a bunch of things and the closest to what I want was with this:

``````i <- 1
for( i in 1:a )
{
e <- lapply(B, function(x) as.data.frame(cbind(A, x)))
print(e)
i <- i+1
}
``````

Close, yes. I can take the answer and do some fiddling and subsetting but its not right and there must be an easy way to do this. I have not seen anything like this in my on line searches. Any help much appreciated.

-

I think the easiest way to do is very similar to what you tried, use two explicit loops. However, there are still some things I would do differently:

1. Pre allocate the list space
2. Use an explicit `counter`
3. Use `drop=FALSE`

Then you can do the following.

``````A <- read.table(text = "ax ay
1  3

B <- read.table(text = "bx by
5   7

out <- vector("list", length = ncol(A) * ncol(B))
counter <- 1
for (i in 1:ncol(A)) {
for (j in 1:ncol(B)) {
out[[counter]] <- cbind(A[,i, drop = FALSE], B[,j, drop = FALSE])
counter <- counter + 1
}
}
out

## [[1]]
##   ax bx
## 1  1  5
## 2  2  6
##
## [[2]]
##   ax by
## 1  1  7
## 2  2  8
##
## [[3]]
##   ay bx
## 1  3  5
## 2  4  6
##
## [[4]]
##   ay by
## 1  3  7
## 2  4  8
``````
-
Perfect! Exactly what I needed. I especially like the explcit counter. I feel I was onto the right thing but not all the way there and I see it now. Much appreciated! –  Natalie Bjorklund Jun 5 '13 at 0:54

Does something like this work for you?

``````Dataset1 <- data.frame(ax=1:2,ay=3:4)
Dataset2 <- data.frame(bx=5:6,by=7:8)

apply(
expand.grid(seq_along(Dataset1),seq_along(Dataset2)),
1,
function(x) cbind(Dataset1[x[1]],Dataset2[x[2]])
)
``````

Result:

``````[[1]]
ax bx
1  1  5
2  2  6

[[2]]
ay bx
1  3  5
2  4  6

[[3]]
ax by
1  1  7
2  2  8

[[4]]
ay by
1  3  7
2  4  8
``````
-
This works, actually quite well but I need the counter Henrik provided. I wish I could tick both as the right answer. Thank you for taking time to answer. I do appreciate it. –  Natalie Bjorklund Jun 5 '13 at 0:58
@NatalieBjorklund - there is almost certainly a work-around to generate a counter of sorts. The counter will end up as `length(result)` in this case. The `for(i in...)` logic in R frequently works out being more convoluted in the long run, but I do understand that this is just part of a larger script. –  thelatemail Jun 5 '13 at 1:31
The counter makes sense within the longer script BUT that being said, I will be checking if I can get rid of the counter with your answer because I like less convoluted. So thank you. –  Natalie Bjorklund Jun 5 '13 at 16:03

If I understand the question, I think you can use `combn` to select the columns you want. For instance, if wanted all combinations of 8 columns taken 2 at at time, you could do:

``````combn(1:8, 2)
``````

Which gives (in part for readability):

``````combn(1:8,2)[,c(1:5, 15:18)]
[,1] [,2] [,3] [,4] [,5] [,6] [,7] [,8] [,9]
[1,]    1    1    1    1    1    3    3    3    3
[2,]    2    3    4    5    6    5    6    7    8
``````

So then columns of this matrix can be used as the indices you want.

-
I don't think this will work because I have to be able to use it over and over with different datasets which may or may not have the same number of columns and I won't know anything ecept the number of columns in each dataset as it is generated. But I appreciate you taking the time to answer. Thank you. –  Natalie Bjorklund Jun 5 '13 at 0:56
@NatalieBjorklund For future use, as you read in each data set, you can use `ncol` to find the number of columns if that helps. –  Bryan Hanson Jun 5 '13 at 1:39
Yes I noticed that and made note of it. That will be useful in future. –  Natalie Bjorklund Jun 5 '13 at 16:01