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I am looking for a string comparison metric ala Levenshtein that will also work when the characters in the string have been scrambled up. Does anyone know of such a metric? It would also be great if there was a Python module that could calculate such a metric. Thanks!

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How scrambled- like transversions of pairs of characters or entirely jumbled? If the latter, you want Jaccard or cosine similarity – David Robinson Nov 4 '12 at 17:28
@DavidRobinson any similarity metric for transversions of pairs of characters? – Alok Nayak May 16 at 5:25

3 Answers 3

You can try the difflib library or there's also an external library called pylevenshtein.

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Count the number of each type of character (using a HashMap or equivalent) then subtract the resultant values and take the absolute value of each subtraction. Add all those together, then divide by 2 (because you've double counted each difference).



a - 3 , 2 -> |1| -> 1
b - 1 , 1 -> |0| -> 0
m - 0 , 1 -> |-1| -> 1
n - 2 , 1 -> |1| -> 1
t - 0 , 1 -> |-1| -> 1

Therefore you have 1+1+1+1 = 4 -> 4/2 = 2

Check: In banana, change one n to a t and one a to an m (2 changes) and you have the letters in batman

If the strings are of different lengths, calculate the difference in length of the string, subtract that number from your difference count (above). Then divide by 2, then add that number back.



total difference count: 3
3 - 3 = 0 -> 0 / 2 = 0 -> 0 + 3 = 3

Also I wouldn't use Levenshtein at all here because a lot of the difficulty with that problem is positioning, which you don't care about.

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The dynamic programing solution of levenstien distance can be edited simply to catch pair wise scrambling for e.g delhi, dehli and give this less weightage compared to coresponding substitutions or additions or deletions.

Edit: This algorithm already exists and is named as Damerau–Levenshtein distance . Searching on this algorithm will give you a Python package which you can use directly.

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