I have a population `p`

of indices and corresponding weights in vector `w`

. I want to get `k`

samples from this population *without replacement* where the selection is done proportional to the weights in random.

I know that `randsample`

can be used for selection with replacement by saying

```
J = randsample(p,k,true,w)
```

but when I call it with parameter `false`

instead of `true`

, I get

```
??? Error using ==> randsample at 184
Weighted sampling without replacement is not supported.
```

I wrote my own function as discussed in here:

```
p = 1:n;
J = zeros(1,k);
for i = 1:k
J(i) = randsample(p,1,true,w);
w(p == J(i)) = 0;
end
```

But since it has `k`

iterations in the loop, I seek for a shorter/faster way to do this. Do you have any suggestions?

**EDIT**: I want to randomly select `k`

unique columns of a matrix proportional to some weighting criteria. That is why I use sampling without replacement.