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Numpy proposes a way to get the index of the maximum value of an array via np.argmax.

I would like a similar thing, but returning the indexes of the N maximum values.

For instance, if I have an array [1, 3, 2, 4, 5], it function(array, n=3) would return [4, 3, 1].

Thanks :)

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Don't you mean [5,4,3] ? – Jakob Bowyer Aug 2 '11 at 10:33
@Jakob: no, OP wants the indexes of said values. – katrielalex Aug 2 '11 at 10:34
Sorry im blind... – Jakob Bowyer Aug 2 '11 at 10:37
Your question is not really well defined. For example, what would the indices (you expect) to be for array([5, 1, 5, 5, 2, 3, 2, 4, 1, 5]), whit n= 3? Which one of all the alternatives, like [0, 2, 3], [0, 2, 9], ... would be the correct one? Please elaborate more on your specific requirements. Thanks – eat Aug 2 '11 at 17:02

6 Answers 6

up vote 47 down vote accepted

The simplest I've been able to come up with is:

In [1]: import numpy as np

In [2]: arr = np.array([1, 3, 2, 4, 5])

In [3]: arr.argsort()[-3:][::-1]
Out[3]: array([4, 3, 1])

This involves a complete sort of the array. I wonder if numpy provides a built-in way to do a partial sort; so far I haven't been able to find one.

If this solution turns out to be too slow (especially for small n), it may be worth looking at coding something up in Cython.

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Could line 3 be written equivalently as arr.argsort()[-1:-4:-1]? I've tried it in interpreter and it comes up with the same result, but I'm wondering if it's not broken by some example. – abroekhof Sep 20 '12 at 9:05
@abroekhof Yes that should be equivalent for any list or array. Alternatively, this could be done without the reversal by using np.argsort(-arr)[:3], which I find more readable and to the point. – askewchan May 29 '13 at 19:48

Newer NumPy versions (1.8 and up) have a function called argpartition for this. To get the indices of the four largest elements, do

>>> a
array([9, 4, 4, 3, 3, 9, 0, 4, 6, 0])
>>> ind = np.argpartition(a, -4)[-4:]
>>> ind
array([1, 5, 8, 0])
>>> a[ind]
array([4, 9, 6, 9])

Unlike argsort, this function runs in linear time in the worst case, but the returned indices are not sorted, as can be seen from the result of evaluating a[ind]. If you need that too, sort them afterwards:

>>> ind[np.argsort(a[ind])]
array([1, 8, 5, 0])

To get the top-k elements in sorted order in this way takes O(n + k lg k) time.

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Actually it has to be O(n lg k) time. Cannot imagine how O(n + k lg k) can be – varela Nov 25 '14 at 14:12
@varela argpartition runs in linear time, O(n), using the introselect algorithm. The subsequent sort only handles k elements, so that runs in O(k log k). – larsmans Nov 26 '14 at 15:52

EDIT: Modified to include Ashwini Chaudhary's improvement.

>>> import heapq
>>> import numpy
>>> a = numpy.array([1, 3, 2, 4, 5])
>>> heapq.nlargest(3, range(len(a)), a.take)
[4, 3, 1]

For regular Python lists:

>>> a = [1, 3, 2, 4, 5]
>>> heapq.nlargest(3, range(len(a)), a.__getitem__)
[4, 3, 1]

If you use Python 2, use xrange instead of range.


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There's no need of a loop at all here: heapq.nlargest(3, xrange(len(a)), a.take). For Python lists we can use .__getitem__ instead of .take. – Ashwini Chaudhary Oct 28 '14 at 9:09

Simpler yet:

idx = (-arr).argsort()[:n]

where n is the number of maximum values.

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Can this be done for a 2d array? If not, do you perhaps know how? – Andrew Hundt Sep 23 at 2:17

bottleneck has a partial sort function, if the expense of sorting the entire array just to get the N largest values is too great.

I know nothing about this module; I just googled numpy partial sort.

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This will be faster than a full sort depending on the size of your original array and the size of your selection:

>>> A = np.random.randint(0,10,10)
>>> A
array([5, 1, 5, 5, 2, 3, 2, 4, 1, 0])
>>> B = np.zeros(3, int)
>>> for i in xrange(3):
...     idx = np.argmax(A)
...     B[i]=idx; A[idx]=0 #something smaller than A.min()
>>> B
array([0, 2, 3])

It, of course, involves tampering with your original array. Which you could fix (if needed) by making a copy or replacing back the original values. ...whichever is cheaper for your use case.

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FWIW, your solution won't provide unambiguous solution in all situations. OP should describe how to handle these unambiguous cases. Thanks – eat Aug 2 '11 at 17:09
@eat The OP's question is a little ambiguous. An implementation, however, is not really open to interpretation. :) The OP should simply refer to the definition of np.argmax to be sure this specific solution meets the requirements. It's possible that any solution meeting the OP's stated reqirement is acceptable.. – Paul Aug 2 '11 at 18:05
Well, one might consider the implementation of argmax(.) to be unambiguous as well. (IMHO it tries to follow some kind of short circuiting logic, but unfortunately fails to provide universally acceptable behavior). Thanks – eat Aug 2 '11 at 18:50

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