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I have two arrays (A & B). I would like to calculate the % of users of array A , who are included in array B. I have tried but I can´t find the solution.

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    1.0 * len(set(A) & set(B)) / len(set(B)) – Łukasz Rogalski May 30 '16 at 20:35
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    Are these numpy arrays? – ayhan May 30 '16 at 20:39
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    Your title says "lists" but your question says "arrays". Are they Python lists, array.arrays, Numpy arrays, or something else? Also, do either of these "arrays" contain duplicate items? – PM 2Ring May 30 '16 at 20:42
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    Can you have duplicate users in either array? And if so do they weigh in? – totoro May 30 '16 at 20:43
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100.0 * sum((x in B) for x in A) / len(A)

If B is large, use a set for efficiency:

100.0 * len(set(B).intersection(A)) / len(A)
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The most pyhtonic way is like Rogalski above commented.

Python in my opinion is very strong at sets: https://docs.python.org/2/library/sets.html

you can make an intersection in two ways

set(A) & set(B) or set(A).intersection(set(B))

And the formula is like mentioned above (just corrected)

100 * len(set(A) & set(B)) / len(set(A))
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  • The question says "% of users of array A" so I guess the denominator should be len(A). – ayhan May 30 '16 at 21:02
  • .intersection can take an iterable that is not a set so the second call is unnecessary and may as well just be set(A) & set(B) – Padraic Cunningham May 30 '16 at 22:35
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You only need to create one set and sum the times an element in a is in the set of the members in b:

st  = set(b)

perc = sum((ele in st for ele in a),0.0) / len(a) * 100

If you actually have numpy arrays:

import numpy as np

a, b = [1, 3], [1, 4,3]
perc = np.in1d(a, b).sum() / 100.0 / len(a) 

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