# How can I calculate the Jaccard Similarity of two lists containing strings in Python?

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
``````
• 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 at 10:55

@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`

• 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)))`

• 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 at 9:35
• For Python2 use: `return float(len(s1.intersection(s2))) / len(s1.union(s2))` – makis Jul 31 at 10:00

``````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
``````

You can use the Distance library

``````#pip install Distance

import distance

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

# Returns
0.7142857142857143
``````

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 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 at 12:49
• @TedoVrbanec: right thanks for the pointer! – kd88 Apr 26 at 15:07

@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.