# Efficiently replicate matrices in R

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. Commented Oct 23, 2012 at 16:21
• I tested it with `Rprof`and `rbind` took about twice as much time as `replicate`. I was also surprised by that. Commented Oct 23, 2012 at 16:42

Two more solutions:

The first is a modification of the example in the question

``````do.call("rbind", rep(list(A), n))
``````

The second involves unrolling the matrix, replicating it, and reassembling it.

``````matrix(rep(t(A),n), ncol=ncol(A), byrow=TRUE)
``````

Since efficiency is what was requested, benchmarking is necessary

``````library("rbenchmark")
A <- matrix(1:15, nrow=3)
n <- 10

benchmark(rbind(A, A, A, A, A, A, A, A, A, A),
do.call("rbind", replicate(n, A, simplify=FALSE)),
do.call("rbind", rep(list(A), n)),
apply(A, 2, rep, n),
matrix(rep(t(A),n), ncol=ncol(A), byrow=TRUE),
order="relative", replications=100000)
``````

which gives:

``````                                                 test replications elapsed
1                 rbind(A, A, A, A, A, A, A, A, A, A)       100000    0.91
3                   do.call("rbind", rep(list(A), n))       100000    1.42
5  matrix(rep(t(A), n), ncol = ncol(A), byrow = TRUE)       100000    2.20
2 do.call("rbind", replicate(n, A, simplify = FALSE))       100000    3.03
4                                 apply(A, 2, rep, n)       100000    7.75
relative user.self sys.self user.child sys.child
1    1.000      0.91        0         NA        NA
3    1.560      1.42        0         NA        NA
5    2.418      2.19        0         NA        NA
2    3.330      3.03        0         NA        NA
4    8.516      7.73        0         NA        NA
``````

So the fastest is the raw `rbind` call, but that assumes `n` is fixed and known ahead of time. If `n` is not fixed, then the fastest is `do.call("rbind", rep(list(A), n)`. These were for a 3x5 matrix and 10 replications. Different sized matrices might give different orderings.

EDIT:

For n=600, the results are in a different order (leaving out the explicit `rbind` version):

``````A <- matrix(1:15, nrow=3)
n <- 600

benchmark(do.call("rbind", replicate(n, A, simplify=FALSE)),
do.call("rbind", rep(list(A), n)),
apply(A, 2, rep, n),
matrix(rep(t(A),n), ncol=ncol(A), byrow=TRUE),
order="relative", replications=10000)
``````

giving

``````                                                 test replications elapsed
4  matrix(rep(t(A), n), ncol = ncol(A), byrow = TRUE)        10000    1.74
3                                 apply(A, 2, rep, n)        10000    2.57
2                   do.call("rbind", rep(list(A), n))        10000    2.79
1 do.call("rbind", replicate(n, A, simplify = FALSE))        10000    6.68
relative user.self sys.self user.child sys.child
4    1.000      1.75        0         NA        NA
3    1.477      2.54        0         NA        NA
2    1.603      2.79        0         NA        NA
1    3.839      6.65        0         NA        NA
``````

If you include the explicit `rbind` version, it is slightly faster than the `do.call("rbind", rep(list(A), n))` version, but not by much, and slower than either the `apply` or `matrix` versions. So a generalization to arbitrary `n` does not require a loss of speed in this case.

• Wow, thanks a lot! However, my own little benchmark showed that the matrix versions are more efficient than the `rbind` calls for larger n, say n = 600. In that case, the version with the `matrix(rep(t(...`-call was most efficient. Commented Oct 23, 2012 at 18:12

Probably this is more efficient:

``````apply(A, 2, rep, n)
``````
• As I already said before, this method does not yield the correct result. Just try it out yourself: `A <- matrix(1:15, nrow=3);` `n <- 2;` `rbind(A,A);` `matrix(rep(A, n), ncol = ncol(A), byrow = TRUE)` not the same... edit: why can't I create linebreaks in a comment? Commented Oct 23, 2012 at 16:29
• @WolfgangPößnecker Sorry, my mistake. See the update of my answer. Commented Oct 23, 2012 at 16:36
• Thanks, that's already quite an improvement. I'm still looking for even faster solutions, though. ;) Commented Oct 23, 2012 at 16:47
• Great answer, very simple Commented Sep 25, 2020 at 16:29

There's also this way:

``````rep(1, n) %x% A
``````
• also if you want to do an "each" version of the replication where every row of `A` is repeated `n` times then it's simply: `A %x% rep(1, n)`. Commented Aug 2, 2015 at 12:11

You can use indexing

``````A[rep(seq(nrow(A)), n), ]
``````

I came here for the same reason as the original poster and ultimately updated @Brian Diggs comparison to include all of the other posted answers. Hopefully I did this correctly:

``````#install.packages("rbenchmark")
library("rbenchmark")
A <- matrix(1:15, nrow=3)
n <- 600

benchmark(do.call("rbind", replicate(n, A, simplify=FALSE)),
do.call("rbind", rep(list(A), n)),
apply(A, 2, rep, n),
matrix(rep(t(A),n), ncol=ncol(A), byrow=TRUE),
A[rep(seq(nrow(A)), n), ],
rep(1, n) %x% A,
apply(A, 2, rep, n),
matrix(rep(as.integer(t(A)),n),nrow=nrow(A)*n,byrow=TRUE),
order="relative", replications=10000)

#                                                                test replications elapsed relative user.self sys.self user.child sys.child
#5                                          A[rep(seq(nrow(A)), n), ]        10000    0.32    1.000      0.33     0.00         NA        NA
#8 matrix(rep(as.integer(t(A)), n), nrow = nrow(A) * n, byrow = TRUE)        10000    0.36    1.125      0.35     0.02         NA        NA
#4                 matrix(rep(t(A), n), ncol = ncol(A), byrow = TRUE)        10000    0.38    1.188      0.37     0.00         NA        NA
#3                                                apply(A, 2, rep, n)        10000    0.59    1.844      0.56     0.03         NA        NA
#7                                                apply(A, 2, rep, n)        10000    0.61    1.906      0.58     0.03         NA        NA
#6                                                    rep(1, n) %x% A        10000    1.44    4.500      1.42     0.02         NA        NA
#2                                  do.call("rbind", rep(list(A), n))        10000    1.67    5.219      1.67     0.00         NA        NA
#1                do.call("rbind", replicate(n, A, simplify = FALSE))        10000    5.03   15.719      5.02     0.01         NA        NA
``````

what about transforming it into an array, replicate the content and create a new matrix with the updated number of rows?

``````A <- matrix(...)
n = 2 # just a test

a = as.integer(A)
multi.a = rep(a,n)
multi.A = matrix(multi.a,nrow=nrow(A)*n,byrow=T)
``````
• I just tried this and it has the same problem as the answer above: your suggestion does unfortunately not yield the correct result. Commented Oct 23, 2012 at 16:34
• Use `as.integer(t(A))`. Then it works: `matrix(rep(as.integer(t(A)),n),nrow=nrow(A)*n,byrow=TRUE)` Commented Apr 4, 2021 at 21:27