I have two lists with usernames and I want to calculate the Jaccard similarity. Is it possible?

This thread shows how to calculate the Jaccard Similarity between two strings, however I want to apply this to two lists, where each element is one word (e.g., a username).


I ended up writing my own solution after all:

def jaccard_similarity(list1, list2):
    intersection = len(list(set(list1).intersection(list2)))
    union = (len(list1) + len(list2)) - intersection
    return float(intersection) / union
  • 1
    The function will always return 0.0 – xyd Jul 27 '18 at 17:35
  • @xyd Works perfect for me. Can you please explain? – Aventinus Nov 12 '19 at 10:55
  • Worth noting this calculation is different than the answer by @w2bo as this one does not divide by the set length union. – Learning stats by example Dec 3 '19 at 21:14

@aventinus I don't have enough reputation to add a comment to your answer, but just to make things clearer, your solution measures the jaccard_similarity but the function is misnamed as jaccard_distance, which is actually 1 - jaccard_similarity

  • 1
    Thank you for the tip! I did not know that. I edited the answer accordingly. – Aventinus Jun 13 '18 at 21:45

For Python 3:

def jaccard_similarity(list1, list2):
    s1 = set(list1)
    s2 = set(list2)
    return len(s1.intersection(s2)) / len(s1.union(s2))
list1 = ['dog', 'cat', 'cat', 'rat']
list2 = ['dog', 'cat', 'mouse']
jaccard(list1, list2)
>>> 0.5

For Python2 use return len(s1.intersection(s2)) / float(len(s1.union(s2)))

  • 1
    This will also give 0.0 as result. Return statement should be modified : return float(len(s1.intersection(s2))) / float(len(s1.union(s2))) – Shalini Baranwal May 13 '19 at 9:35
  • For Python2 use: return float(len(s1.intersection(s2))) / len(s1.union(s2)) – makis Jul 31 '19 at 10:00

Assuming your usernames don't repeat, you can use the same idea:

def jaccard(a, b):
    c = a.intersection(b)
    return float(len(c)) / (len(a) + len(b) - len(c))

list1 = ['dog', 'cat', 'rat']
list2 = ['dog', 'cat', 'mouse']
# The intersection is ['dog', 'cat']
# union is ['dog', 'cat', 'rat', 'mouse]
words1 = set(list1)
words2 = set(list2)
jaccard(words1, words2)
>>> 0.5

@Aventinus (I also cannot comment): Note that Jaccard similarity is an operation on sets, so in the denominator part it should also use sets (instead of lists). So for example jaccard_similarity('aa', 'ab') should result in 0.5.

def jaccard_similarity(list1, list2):
    intersection = len(set(list1).intersection(list2))
    union = len(set(list1)) + len(set(list2)) - intersection

    return intersection / union

Note that in the intersection, there is no need to cast to list first. Also, the cast to float is not needed in Python 3.


You can use the Distance library

#pip install Distance

import distance

distance.jaccard("decide", "resize")

# Returns

If you'd like to include repeated elements, you can use Counter, which I would imagine is relatively quick since it's just an extended dict under the hood:

from collections import Counter
def jaccard_repeats(a, b):
    """Jaccard similarity measure between input iterables,
    allowing repeated elements"""
    _a = Counter(a)
    _b = Counter(b)
    c = (_a - _b) + (_b - _a)
    n = sum(c.values())
    return n/(len(a) + len(b) - n)

list1 = ['dog', 'cat', 'rat', 'cat']
list2 = ['dog', 'cat', 'rat']
list3 = ['dog', 'cat', 'mouse']     

jaccard_repeats(list1, list3)      
>>> 0.75

jaccard_repeats(list1, list2) 
>>> 0.16666666666666666

jaccard_repeats(list2, list3)  
>>> 0.5
  • I think this solution is not correct as regards repeated items. However, it works ok for lists with non-repeated items. – AlessioX Feb 20 '19 at 7:37
  • I think that this is distance, so if one want similarity, '1 - ' should be removed from return line. – Tedo Vrbanec Apr 26 '19 at 12:49

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