I have a matrix and look for an efficient way to replicate it n times (where n is the number of observations in the dataset). For example, if I have a matrix A

`A <- matrix(1:15, nrow=3)`

then I want an output of the form

`rbind(A, A, A, ...) #n times`

.

Obviously, there are many ways to construct such a large matrix, for example using a `for`

loop or `apply`

or similar functions. However, the call to the "matrix-replication-function" takes place in the very core of my optimization algorithm where it is called tens of thousands of times during one run of my program. Therefore, loops, apply-type of functions and anything similar to that are not efficient enough. (Such a solution would basically mean that a loop over n is performed tens of thousands of times, which is obviously inefficient.) I already tried to use the ordinary `rep`

function, but haven't found a way to arrange the output of `rep`

in a matrix of the desired format.

The solution
`do.call("rbind", replicate(n, A, simplify=F))`

is also too inefficient because `rbind`

is used too often in this case. (Then, about 30% of the total runtime of my program are spent performing the rbinds.)

Does anyone know a better solution?

`rbind`

is only used once in the`do.call`

way. it's the replication that's probably bogging it down. – Matthew Plourde Oct 23 '12 at 16:21`Rprof`

and`rbind`

took about twice as much time as`replicate`

. I was also surprised by that. – Wolfgang Pößnecker Oct 23 '12 at 16:42