I'm trying to write an R script that, as first step, computes `dist()`

and other things for each row of an input matrix and then, as second step of the script, uses each pairs of output matrixes obtained in the step one to make another calculation.
My problem is that I'm not able to "conserve" all the matrixes obtained from the step one. Can someone tell me a good strategy?

My code looks like this:

```
n<- nrow (aa)
output <- matrix (0, n, n)
for (i in 1:n)
{
for (j in i:n)
{
akl<- function (dii){
ddi<- as.matrix (dii)
m<- rowMeans(ddi)
M<- mean(ddi)
r<- sweep (ddi, 1, m)
b<- sweep (r, 2, m)
return (b + M)
}
A<- akl(dist(aa[i,]))
B<- akl(dist(aa[j,]))
V <- sqrt ((sqrt (mean(A * A))) * (sqrt(mean(B * B))))
if (V > 0) {
output[i,j] <- (sqrt(mean(A * B))) / V else output[i,j] <- 0
}
}
}
```

I would like to obtain all the resulting matrixes from the `akl`

function and then use them for the rest of the calculation.
The script that I show here is to expensive in terms of time because it compute akl everytime and for large input matrix is a problem.

`else`

with`} else {`

before trying to avoid the nested`for`

loops and possibly vectorize. – Roland Jan 9 '13 at 16:46