Fuzzy string matching algorithm in Python

I'm trying to find some sort of a good, fuzzy string matching algorithm. Direct matching doesn't work for me — this isn't too good because unless my strings are a 100% similar, the match fails. The Levenshtein method doesn't work too well for strings as it works on a character level. I was looking for something along the lines of word level matching e.g.

String A: The quick brown fox.

String B: The quick brown fox jumped over the lazy dog.

These should match as all words in string A are in string B.

Now, this is an oversimplified example but would anyone know a good, fuzzy string matching algorithm that works on a word level.

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So you want to know if String A is a near-subset of String B? Is it not a match if you swap Strings A and B? –  Dolph May 27 '10 at 17:38

You can use difflib to find the longest match:

>>> a = 'The quick brown fox.'
>>> b = 'The quick brown fox jumped over the lazy dog.'
>>> import difflib
>>> s = difflib.SequenceMatcher(None, a, b)
>>> s.find_longest_match(0,len(a),0,len(b))
Match(a=0, b=0, size=19) # returns NamedTuple (new in v2.6)

Or pick some minimum matching threshold. Example:

>>> difflib.SequenceMatcher(None, a, b).ratio()
0.61538461538461542
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I think difflib is closer to what the OP wanted. He said 'fuzzy', so I think his example was just an especially easy case. –  Adam Nelson May 27 '10 at 18:01
ratio() also works on a sequence item (= character) level, so your answer needs a little more work. :) –  badp May 27 '10 at 18:02
@bp: thanks. I added another example more tailored to the question. –  bernie May 27 '10 at 18:03

Take a look at this python library, which SeatGeek open-sourced yesterday. Obviously most of these kinds of problems are very context dependent, but it might help you.

from fuzzywuzzy import fuzz

s1 = "the quick brown fox"
s2 = "the quick brown fox jumped over the lazy dog"
s3 = "the fast fox jumped over the hard-working dog"

fuzz.partial_ratio(s1, s2)
> 100

fuzz.token_set_ratio(s2, s3)
> 73

http://seatgeek.com/blog/dev/fuzzywuzzy-fuzzy-string-matching-in-python https://github.com/seatgeek/fuzzywuzzy

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If all you want to do is to test whether or not all the words in a string match another string, that's a one liner:

if not [word for word in b.split(' ') if word not in a.split(' ')]:
print 'Match!'

If you want to score them instead of a binary test, why not just do something like:

((# of matching words) / (# of words in bigger string)) * ((# of words in smaller string) / (# of words in bigger string))

?

If you wanted to, you could get fancier and do fuzzy match on each string.

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I did this some time ago with C#, my previous question is here. There is starter algorith for your interest, you can easily transform it to python.

Ideas you should use writing your own algorithm is something like this:

• Have a list with original "titles" (words/sentences you want to match with).
• Each title item should have minimal match score on word/sentence, ignore title as well.
• You also should have global minimal match percentage of final result.
• You should calculate each word - word Levenshtein distance.
• You should increase total match weight if words are going in the same order (quick brown vs quick brown, should have definitively higher weight than quick brown vs. brown quick.)
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