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I am trying to utilize k-nearest neighbors for the string similarity problem i.e. given a string and a knowledge base, I want to output k strings that are similar to my given string. Are there any tutorials that explain how to utilize kd-trees to efficiently do this k-nearest neighbor lookup for strings? The string length will not exceed more than 20 characters.

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What's your similarity metric between 2 strings ? scipy.spatial.cKDtree is fast and solid, good for 20d, but does only Lp metrics. –  denis Apr 19 '11 at 15:25

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up vote 7 down vote accepted

Probably one of the hottest blog posts I had read a year or so ago: Levenstein Automata. Take a look at that article. It provides not only a description of the algorithm but also code to follow. Technically, it's not a kd-tree but it's quite related to the string matching and dictionary correction algorithms one might encounter/use in the real world.

He also has another blog post about BK-trees which are much better at the fuzzy matching for strings and string look ups where there are mispellings. Here is another resource containing source code for a BK-tree (this one I can't verify the accuracy or proper implementation.)

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+1 for Levenshtein transducers. –  larsmans Apr 18 '11 at 7:03
    
the Levenshtein Automata is impressive, however, having implemented it, I can only say that the precomputed version quickly explodes (in term of nodes) when the distance grow up. In practice, it's blazing fast to search in a Trie, but the automaton starts becoming really big for a distance of 4 and upwards. –  Matthieu M. Apr 18 '11 at 16:39
    
@Matthieu M. what would you recommend instead? –  wheaties Apr 18 '11 at 17:21
    
I don't have implemented (seriously) any other mechanism, so I don't have any recommendation. If you can live with a maximum distance of 3, then do use it, otherwise, you'll have to explore on your own, I am afraid :) –  Matthieu M. Apr 18 '11 at 18:46

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