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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.

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3 Answers 3

up vote 3 down vote accepted

I don't think it is possible to avoid some sort of loop, since sampling without replacement means that the samples are no longer independent. Besides, what does the weighting actually mean when sampling without replacement?

In any case, for relatively small sample sizes I don't think you will notice any problem with performance. All the solutions I can think of basically do what you have done, but possibly expand out what is going on in randsample.

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I couldn't find a way to do it either. The algorithm here (stackoverflow.com/questions/2140787/…) is similar to mine and works in O(n+k) time. Thanks for your reply. I will add in the question now why I need this. –  petrichor Nov 21 '11 at 8:06

I think you should keep using the for, but I suggest to reduce the corresponding weight by one.

w(p == J(i)) = w(p == J(i)) -1;
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An alternative to the for loop approach of petrichor that performs well if the number of samples is much smaller than the number of elements is to compute a weighted random sample with replacement and then remove duplicates. Of course, this is a very bad idea if the number of samples k is near the number of elements n, as this will require many iterations, but by avoiding for loops, the wall clock performance is often better. Your mileage may vary.

function I=randsample_noreplace(n,k,w)
I = sort(randsample(n, k, true, w));
while 1
    Idup = find( I(2:end)-I(1:end-1) ==0);
    if length(Idup) == 0
            break
    else
            I(Idup)=randsample(n, length(Idup), true, w);
            I = sort(I);
    end
end
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