# r - pairwise combinations of rows from table?

Assume a table as below:

``````X =

col1    col2    col3
row1    "A"      "0"     "1"
row2    "B"      "2"     "NA"
row3    "C"      "1"     "2"
``````

I select combinations of two rows, using the code below:

``````pair <- apply(X, 2, combn, m=2)
``````

This returns a matrix of the form:

``````pair =

[,1] [,2] [,3]
[1,] "A"  "0"  "1"
[2,] "B"  "2"  NA
[3,] "A"  "0"  "1"
[4,] "C"  "1"  "2"
[5,] "B"  "2"  NA
[6,] "C"  "1"  "2"
``````

I wish to iterate over pair, taking two rows at a time, i.e. first isolate [1,] and [2,], then [3,] and [4,] and finaly, [5,] and [6,]. These rows will then be passed as arguments to regression models, i.e. lm(Y ~ row[i]*row[j]).

I am dealing with a large dataset. Can anybody advise how to iterate over a matrix two rows at a time, assign those rows to variables and pass as arguments to a function?

Thanks, S ;-)

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A reproducible example of what you're trying to do would increase the probability that someone helps you, and will help them provide a better answer. – Joshua Ulrich Nov 16 '10 at 18:35

It is unnecessary to multiply the rows of your matrix like that, and if you have a large data set it is might get problematic. In stead just pick out the relevant rows for each instance. But it is convenient to create the selection beforehand, something like this perhaps:

``````xselect <- combn(1:nrow(X),2)
``````

To illustrate with your data (assuming you only use columns 2 and 3):

``````X <- matrix(c("A", "B", "C", 0,2,1,1,NA,2),3,3)
Y <- rnorm(2, 4, 2)

for (i in 1:ncol(xselect))
{
x1 <- as.numeric(X[xselect[1,i], c(2,3)])
x2 <- as.numeric(X[xselect[2,i], c(2,3)])
print(lm(Y ~ x1 * x2))
}
``````
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I'm not sure exactly what you're trying to do with the linear models, but to iterate over `X`, a pair of rows at a time, make a factor for each pair, and then use `by`

``````fac <- as.factor(sort(rep(1:(nrow(X)/2), 2)))
by(X, fac, FUN)
``````

where `FUN` is whatever function you want to apply over the pairs of rows in X.

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