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I am trying to work out which entries in my data store are near-duplicates using approximate string matching.

Is there any implementation of the following approach in python, or do i need to try and roll my own?

Thanks :)

from wikipedia:


A brute-force approach would be to compute the edit distance to P for all substrings of T, and then choose the substring with the minimum distance. However, this algorithm would have the running time O(n3 m)

A better solution[3][4], utilizing dynamic programming, uses an alternative formulation of the problem: for each position j in the text T and each position i in the pattern P, compute the minimum edit distance between the i first characters of the pattern, Pi, and any substring Tj',j of T that ends at position j.

What is the most efficient way to apply this to many strings?

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google("python levenshtein")
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difflib.get_close_matches should do the work.

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difflib doesn't necessarily return minimum edit distance. – wds May 24 '12 at 8:20

difflib might be the answer, eg,

from difflib import context_diff

a = 'acaacbaaca'
b = 'accabcaacc'

print ''.join(context_diff(a,b))
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Levenshtein distance performs very similarly to the fuzzywuzzy standard ratio() function. fuzzywuzzy uses difflib

example from the fuzzywuzzy documentation:

fuzz.ratio("this is a test", "this is a test!")
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