# How to bucket locality-sensitive hashes?

I already have the algorithm to produce locality-sensitive hashes, but how should I bucket them to take advantage of their characteristics(i.e. similar elements have near hashes(with the hamming distance))?

In the matlab code I found they simply create a distance matrix between the hashes of the points to search and the hashes of the points in the database, to simplify the code,while referencing a so called Charikar method for an actually good implementation of the search method.

I tried to search for that, but I'm not sure how to apply to my case any of the methods I found(like the multi-probe method). None of these techniques seems easily pluggable if you already have the hashes. Is there any simple example code for this? Or any suggestion?

This is the link to the page with the matlab code I'm talking about: http://www.eecs.berkeley.edu/~kulis/klsh/klsh.htm

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Doing some research on the matter I've come up with an algorithm, which basically consist in creating tables for each bit(in this case) and divide all the elements between those that have that bit set and those that haven't. Do this for all the bits. Then, while searching, you visit the right table for each bit of the query and this way you take all the elements to compute the distance with the query(once you erased the dupes). –  user823699 Jul 5 '11 at 22:58
All this taking in consideration an obvious optimization, which is, talking about bits, they're either 0 or 1, so you don't really need to list them both(that is, if you list those that have the bit set, it means that all the others haven't). –  user823699 Jul 5 '11 at 23:01
If your comments answer your own question, could you post them as an answer and accept it (which you can do, I think, after two days)? This way other people can see the problem is solved more easily... –  Jonas Heidelberg Aug 31 '11 at 21:33