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How to calculate Levenshtein Distance matrix of strings in Python ?

              str1    str2    str3    str4    ...     strn
      str1    0.8     0.4     0.6     0.1     ...     0.2
      str2    0.4     0.7     0.5     0.1     ...     0.1
      str3    0.6     0.5     0.6     0.1     ...     0.1
      str4    0.1     0.1     0.1     0.5     ...     0.6
      .       .       .       .       .       ...     .
      .       .       .       .       .       ...     .
      .       .       .       .       .       ...     .
      strn    0.2     0.1     0.1     0.6     ...     0.7

Using the distance function, we can calculate distance between 2 words. In my case, I have one list containing N number of strings. The desired result is to calculate the distance matrix and after that,do the clustering of words.

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3 Answers 3

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Just use the pdist version that accepts a custom metric.

Y = pdist(X, levensthein)

and for the levensthein then you can use the implementation of rosettacode as suggested by Tanu

If you want a full squared matrix just use squareform on the result:

Y = scipy.spatial.distance.squareform(Y)
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  • 1
    No need to write the algorithm, there are several PyPI packages, that implement it, e.g. editdistance, pylev. May 25, 2016 at 7:05
  • @elabard Pylev works for 2 words but my question is how to compue matrix pylev.levenshtein('kitten', 'sitting') 3 May 25, 2016 at 7:59
  • 1
    is it not exactly what I have suggested? pdist returns a matrix by applying levensthein or whatever metrics you want to each pair of elements...
    – elabard
    May 25, 2016 at 8:36
  • Upon passing a list of strings, pdist is saying "A 2-dimensional array must be passed."
    – user2124834
    Oct 5, 2016 at 18:40
  • 1
    just reshape your input with .reshape(-1,1)
    – elabard
    Oct 6, 2016 at 14:04
5

Here is my code

import pandas as pd
from Levenshtein import distance
import numpy as np

Target = ['Tree','Trip','Treasure','Nothingtodo']

List1 = Target
List2 = Target

Matrix = np.zeros((len(List1),len(List2)),dtype=np.int)

for i in range(0,len(List1)):
  for j in range(0,len(List2)):
      Matrix[i,j] = distance(List1[i],List2[j])

print Matrix

[[ 0  2  4 11]
 [ 2  0  6 10]
 [ 4  6  0 11]
 [11 10 11  0]]
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  • as I suggested in my answer you don't have to do the nested for by hand...pdist does it for you and in a more efficient way since it computes only the upper triangular distances... (a distance is always symmetric)
    – elabard
    May 27, 2016 at 12:12
0

You could do something like this

from Levenshtein import distance
import numpy as np
from time import time

def get_distance_matrix(str_list):
    """ Construct a levenshtein distance matrix for a list of strings"""
    dist_matrix = np.zeros(shape=(len(str_list), len(str_list)))
    t0 = time()
    print "Starting to build distance matrix. This will iterate from 0 till ", len(str_list) 
    for i in range(0, len(str_list)):
        print i
        for j in range(i+1, len(str_list)):
                dist_matrix[i][j] = distance(str_list[i], str_list[j]) 
    for i in range(0, len(str_list)):
        for j in range(0, len(str_list)):
            if i == j:
                dist_matrix[i][j] = 0 
            elif i > j:
                dist_matrix[i][j] = dist_matrix[j][i]
    t1 = time()
    print "took", (t1-t0), "seconds"
    return dist_matrix

str_list = ["analyze", "analyse", "analysis", "analyst"]
get_distance_matrix(str_list)

Starting to build distance matrix. This will iterate from 0 till  4
0
1
2
3
took 0.000197887420654 seconds
>>> array([[ 0.,  1.,  3.,  2.],
   [ 1.,  0.,  2.,  1.],
   [ 3.,  2.,  0.,  2.],
   [ 2.,  1.,  2.,  0.]])

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