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Anyone have any idea how knnclassify is implemented in Matlab? I was wondering if they use a kd-tree for efficient distance computations. Any ideas?

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Have you tried edit knnclassify to see the source? If they're not using a C++ implementation, you can see exactly what they've been doing. –  Jonas Mar 2 '11 at 22:11
    
Thanks for that. I hadnt even considered that. I just checked and they use knnsearch which I also opened and that has its own compiled code. In any case I implemented my own version of knnclassify that works about ten thousand time faster using matlabs own vectorization so i think its pretty ridiculous they couldnt have gone to the effort of optimizing their own code. –  twerdster Mar 3 '11 at 5:07

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I think the matlab documentation related to this is very clear. However your question about ... use a kd-tree for efficient distance computations is not quite so clear.

I mainly mean who cares, but if you do; then do some timings between alternatives.

Anyway the question with 'rules'-parameter is way much more complicated, than just finding out some simple kd-tree usage. So please really try to time your operations first and if they are not sufficient somehow, I'll surely be able to fine tune them for you then!

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Youre right. I didnt word it very clearly. i didnt mean how they compute the distances themselves but instead how they compare the distances. And that really does matter because brute force is O(n^2) which for a matrix with over 2000 elements starts becoming timely. –  twerdster Mar 2 '11 at 0:24

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