Sign up ×
Stack Overflow is a community of 4.7 million programmers, just like you, helping each other. Join them, it only takes a minute:

I have a large collection of person names (e.g. "john smith"). I want to look up people by name in it. However, some of the queries will be misspelled (e.g. "jon smth", "johnsm ith"). Are there any spelling correction libraries with Python bindings that might find spelling-corrected matches for me?

I'm aware of Whoosh and Python-aspell. Whoosh's spelling correction doesn't quite work for me because it writes the collection of correct spellings to disk rather than storing it in memory. That makes lookups too slow for my application. It doesn't seem to be trivial to change this behavior, because of how the code is structured. Also Whoosh does not weight different character-edits differently even though, say, a 'y' is much more likely to be confused with an 'i' ("jim kazinsky" -> "jim kazinski") than it is a 'z'.

Aspell doesn't work well with person names, since names typically contain white space -- Aspell considers the word to be the fundamental unit of correction. Also, as I understand it, Aspell uses an n-gram model of spelling correction, rather than a character-edit distance model. While an n-gram model makes sense for dictionary words, it doesn't work as well for names: the people "bob ruzatoxg" and "joe ruzatoxg" have a lot of rare trigrams in common, since they have the same rare last name. But they're clearly different people.

I should also mention that I can't just compare each query to all of the entries in the collection -- that would be too slow. Some index needs to get built beforehand.


share|improve this question

1 Answer 1

Sounds like (no pun intended there) you need some form of the Metaphone algorithm, which has been implemented in Python and is available on Pypi:

There are other algorithms too, such as Levenshtein and Soundex (haven't yet found a reliable Python implementation of this) - you might want to calculate some form of metric using more than one of these (perhaps even give different weighting to each result) to come up with a results list of likely corrections.

share|improve this answer
The Metaphone library looks useful, thanks for that. If I end up writing my own spell checker for names (and I'm still holding out hope someone has already written one I can use....), I'll probably use Metaphone matching of a part of the metric. –  Jeff Dec 3 '12 at 20:24
The Levenshtein library looks to be more for pairwise matching between two strings. I don't think I can use that, because then I'll have to compare each query to every name string in my collection. With the Metaphone library, however, I should be able to build a dictionary of the phonetic representations of the names in my collection before processing queries. –  Jeff Dec 3 '12 at 20:30
fuzzywuzzy might be an option. –  Matthias Dec 4 '12 at 0:15
You can always pre-compute likely manglings of each name under the metric and store them all. Increases storage requirements but obviates the need to check the whole list at lookup –  Ben Allison Dec 5 '12 at 10:40

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.