I have a matrix `A`

, and I would like to draw samples from each column of `A`

and construct new matrices. For example:

`A = matrix(seq(1,9),3,3)`

so to get the 1st bootstrap matrix, I would sample with replacement (3 times) from the first column of `A`

, i.e. 1,2,3, sample with replacement (3 times) from the second column of `A`

, i.e. 4,5,6, and sample with replacement (3 times) from the third column of `A`

, i.e. 7,8,9. After that, I re-construct the 1st bootstrap matrix B1 by combining the three bootstrap vectors. I will repeat this procedure for B=199 times, so that bootstrap matrices B1,...,B199 will be available.

My question is, how can I make this program run faster? Which function should I use? I know `apply`

involves essentially `for`

loops so the speed is not guaranteed. How about `do.call`

? Thanks!