How do I get the probability of a string being similar to another string in Python?

I want to get a decimal value like 0.9 (meaning 90%) etc. Preferably with standard Python and library.


similar("Apple","Appel") #would have a high prob.

similar("Apple","Mango") #would have a lower prob.
  • 6
    I don't think "probability" is quite the right term here. In any event, see stackoverflow.com/questions/682367/… – NPE Jun 30 '13 at 7:37
  • 1
    The word you are looking for is ratio, not probability. – Inbar Rose Jun 30 '13 at 8:21
  • 1
    Take a look at Hamming distance. – Diana Jun 30 '13 at 8:47
  • 2
    The phrase is 'similarity metric', but there are multiple similarity metrics (Jaccard, Cosine, Hamming, Levenshein etc.) said so you need to specify which. Specifically you want a similarity metric between strings; @hbprotoss listed several. – smci Apr 26 '18 at 0:56
  • @NPE the link is broken – lindhe Aug 29 '20 at 13:37

13 Answers 13


There is a built in.

from difflib import SequenceMatcher

def similar(a, b):
    return SequenceMatcher(None, a, b).ratio()

Using it:

>>> similar("Apple","Appel")
>>> similar("Apple","Mango")
  • 49
    See this great answer comparing SequenceMatcher vs python-Levenshtein module. stackoverflow.com/questions/6690739/… – ssoler Feb 9 '15 at 13:06
  • 1
    Interesting article and tool: chairnerd.seatgeek.com/… – DevLounge Jan 5 '16 at 19:04
  • 7
    I would highly recommend checking out the whole difflib doc docs.python.org/2/library/difflib.html there is a get_close_matches built in, although i found sorted(... key=lambda x: difflib.SequenceMatcher(None, x, search).ratio(), ...) more reliable, with custom sorted(... .get_matching_blocks())[-1] > min_match checks – ThorSummoner Sep 15 '16 at 19:51
  • 2
    @ThorSummoner brings attention to a very useful function (get_closest_matches). It's a convenience function that may be what you are looking for, AKA read the docs! In my particular application I was doing some basic error checking / reporting to the user providing bad input, and this answer allows me to report to them the potential matches and what the "similarity" was. If you don't need to display the similarity, though, definitely check out get_closest_matches – svenevs Sep 3 '17 at 22:54
  • This worked perfectly. Simple and effective. Thankyou :) – Karthic Srinivasan May 9 '20 at 16:39

I think maybe you are looking for an algorithm describing the distance between strings. Here are some you may refer to:

  1. Hamming distance
  2. Levenshtein distance
  3. Damerau–Levenshtein distance
  4. Jaro–Winkler distance

Solution #1: Python builtin

use SequenceMatcher from difflib

pros: native python library, no need extra package.
cons: too limited, there are so many other good algorithms for string similarity out there.

example :
>>> from difflib import SequenceMatcher
>>> s = SequenceMatcher(None, "abcd", "bcde")
>>> s.ratio()

Solution #2: jellyfish library

its a very good library with good coverage and few issues. it supports:
- Levenshtein Distance
- Damerau-Levenshtein Distance
- Jaro Distance
- Jaro-Winkler Distance
- Match Rating Approach Comparison
- Hamming Distance

pros: easy to use, gamut of supported algorithms, tested.
cons: not native library.


>>> import jellyfish
>>> jellyfish.levenshtein_distance(u'jellyfish', u'smellyfish')
>>> jellyfish.jaro_distance(u'jellyfish', u'smellyfish')
>>> jellyfish.damerau_levenshtein_distance(u'jellyfish', u'jellyfihs')

Fuzzy Wuzzy is a package that implements Levenshtein distance in python, with some helper functions to help in certain situations where you may want two distinct strings to be considered identical. For example:

>>> fuzz.ratio("fuzzy wuzzy was a bear", "wuzzy fuzzy was a bear")
>>> fuzz.token_sort_ratio("fuzzy wuzzy was a bear", "wuzzy fuzzy was a bear")

You can create a function like:

def similar(w1, w2):
    w1 = w1 + ' ' * (len(w2) - len(w1))
    w2 = w2 + ' ' * (len(w1) - len(w2))
    return sum(1 if i == j else 0 for i, j in zip(w1, w2)) / float(len(w1))
  • but similar('appel','apple') is higher than similar('appel','ape') – tenstar Jun 30 '13 at 7:46
  • 1
    Your function will compare a given string against other stings. I want a way to return the string with the highest similarity ratio – answerSeeker Feb 22 '17 at 22:55
  • 1
    @SaulloCastro, if self.similar(search_string, item.text()) > 0.80: works for now. Thanks, – answerSeeker Feb 22 '17 at 23:12

Package distance includes Levenshtein distance:

import distance
distance.levenshtein("lenvestein", "levenshtein")
# 3

Note, difflib.SequenceMatcher only finds the longest contiguous matching subsequence, this is often not what is desired, for example:

>>> a1 = "Apple"
>>> a2 = "Appel"
>>> a1 *= 50
>>> a2 *= 50
>>> SequenceMatcher(None, a1, a2).ratio()
0.012  # very low
>>> SequenceMatcher(None, a1, a2).get_matching_blocks()
[Match(a=0, b=0, size=3), Match(a=250, b=250, size=0)]  # only the first block is recorded

Finding the similarity between two strings is closely related to the concept of pairwise sequence alignment in bioinformatics. There are many dedicated libraries for this including biopython. This example implements the Needleman Wunsch algorithm:

>>> from Bio.Align import PairwiseAligner
>>> aligner = PairwiseAligner()
>>> aligner.score(a1, a2)
>>> aligner.algorithm

Using biopython or another bioinformatics package is more flexible than any part of the python standard library since many different scoring schemes and algorithms are available. Also, you can actually get the matching sequences to visualise what is happening:

>>> alignment = next(aligner.align(a1, a2))
>>> alignment.score
>>> print(alignment)

The builtin SequenceMatcher is very slow on large input, here's how it can be done with diff-match-patch:

from diff_match_patch import diff_match_patch

def compute_similarity_and_diff(text1, text2):
    dmp = diff_match_patch()
    dmp.Diff_Timeout = 0.0
    diff = dmp.diff_main(text1, text2, False)

    # similarity
    common_text = sum([len(txt) for op, txt in diff if op == 0])
    text_length = max(len(text1), len(text2))
    sim = common_text / text_length

    return sim, diff

You can find most of the text similarity methods and how they are calculated under this link: https://github.com/luozhouyang/python-string-similarity#python-string-similarity Here some examples;

  • Normalized, metric, similarity and distance

  • (Normalized) similarity and distance

  • Metric distances

  • Shingles (n-gram) based similarity and distance
  • Levenshtein
  • Normalized Levenshtein
  • Weighted Levenshtein
  • Damerau-Levenshtein
  • Optimal String Alignment
  • Jaro-Winkler
  • Longest Common Subsequence
  • Metric Longest Common Subsequence
  • N-Gram
  • Shingle(n-gram) based algorithms
  • Q-Gram
  • Cosine similarity
  • Jaccard index
  • Sorensen-Dice coefficient
  • Overlap coefficient (i.e.,Szymkiewicz-Simpson)

There are many metrics to define similarity and distance between strings as mentioned above. I will give my 5 cents by showing an example of Jaccard similarity with Q-Grams and an example with edit distance.

The libraries

from nltk.metrics.distance import jaccard_distance
from nltk.util import ngrams
from nltk.metrics.distance  import edit_distance

Jaccard Similarity

1-jaccard_distance(set(ngrams('Apple', 2)), set(ngrams('Appel', 2)))

and we get:


And for the Apple and Mango

1-jaccard_distance(set(ngrams('Apple', 2)), set(ngrams('Mango', 2)))

and we get:


Edit Distance

edit_distance('Apple', 'Appel')

and we get:


And finally,

edit_distance('Apple', 'Mango')

and we get:


Cosine Similarity on Q-Grams (q=2)

Another solution is to work with the textdistance library. I will provide an example of Cosine Similarity

import textdistance
1-textdistance.Cosine(qval=2).distance('Apple', 'Appel')

and we get:



TextDistance – python library for comparing distance between two or more sequences by many algorithms. It has Textdistance

  • 30+ algorithms
  • Pure python implementation
  • Simple usage
  • More than two sequences comparing
  • Some algorithms have more than one implementation in one class.
  • Optional numpy usage for maximum speed.


import textdistance
textdistance.hamming('test', 'text')




import textdistance

textdistance.hamming.normalized_similarity('test', 'text')



Thanks and Cheers!!!



BLEU, or the Bilingual Evaluation Understudy, is a score for comparing a candidate translation of text to one or more reference translations.

A perfect match results in a score of 1.0, whereas a perfect mismatch results in a score of 0.0.

Although developed for translation, it can be used to evaluate text generated for a suite of natural language processing tasks.


import nltk
from nltk.translate import bleu
from nltk.translate.bleu_score import SmoothingFunction
smoothie = SmoothingFunction().method4


print('BLEUscore:',bleu([C1], C2, smoothing_function=smoothie))

Examples: By updating C1 and C2.

C1='Test' C2='Test'

BLEUscore: 1.0

C1='Test' C2='Best'

BLEUscore: 0.2326589746035907

C1='Test' C2='Text'

BLEUscore: 0.2866227639866161

You can also compare sentence similarity:

C1='It is tough.' C2='It is rough.'

BLEUscore: 0.7348889200874658

C1='It is tough.' C2='It is tough.'

BLEUscore: 1.0

Here's what i thought of:

import string

def match(a,b):
    a,b = a.lower(), b.lower()
    error = 0
    for i in string.ascii_lowercase:
            error += abs(a.count(i) - b.count(i))
    total = len(a) + len(b)
    return (total-error)/total

if __name__ == "__main__":
    print(match("pple inc", "Apple Inc."))

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