The use of a randomization test requires the user to randomly reorder some vector etc as a null model.

In my case I have a vector of 10,000 elements that I must resample from. Let's make that now:

```
x <- sample(c(TRUE, FALSE), 10000, TRUE)
```

So I have real data that looks like `x`

. I want to randomly reorder vector `x`

, `n`

times. This can be accomplished:

```
lapply(1:1000, function(i) sample(x))
```

In this case 1000 replications takes:

```
start <- Sys.time()
lapply(1:1000, function(i) sample(x))
Sys.time() - start
Time difference of 10.20258 secs
```

Now consider that some additional computation must take place and this is for one cell in a distance matrix. Now multiply this overhead by `i`

x `j`

matrix and it gets time consuming. **Is there a faster way to reshuffle the x vector (preferably in base R) n times?** I use a

`list`

structure but if a matrix structure is more efficient I'm open to what ever. In my list the individual elements have the exact same proportion of TRUE/FALSE as the original `x`

. This is key for the randomization test.
`lapply`

to something. – Ananda Mahto Feb 3 at 8:02