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I have a numpy array like this: foo_array = [38,26,14,55,31,0,15,8,0,0,0,18,40,27,3,19,0,49,29,21,5,38,29,17,16]

I want to replace all the zeros with the median value of the whole array (where the zero values are not to be included in the calculation of the median)

So far I have this going on:

foo_array = [38,26,14,55,31,0,15,8,0,0,0,18,40,27,3,19,0,49,29,21,5,38,29,17,16]
foo = np.array(foo_array)
foo = np.sort(foo)
print "foo sorted:",foo
#foo sorted: [ 0  0  0  0  0  3  5  8 14 15 16 17 18 19 21 26 27 29 29 31 38 38 40 49 55]
nonzero_values = foo[0::] > 0
nz_values = foo[nonzero_values]
print "nonzero_values?:",nz_values
#nonzero_values?: [ 3  5  8 14 15 16 17 18 19 21 26 27 29 29 31 38 38 40 49 55]
size = np.size(nz_values)
middle = size / 2
print "median is:",nz_values[middle]
#median is: 26

Is there a clever way to achieve this with numpy syntax?

Thank you

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2 Answers

up vote 2 down vote accepted

This solution takes advantage of numpy.median:

import numpy as np
foo_array = [38,26,14,55,31,0,15,8,0,0,0,18,40,27,3,19,0,49,29,21,5,38,29,17,16]
foo = np.array(foo_array)
# Compute the median of the non-zero elements
m = np.median(foo[foo > 0])
# Assign the median to the zero elements 
foo[foo == 0] = m

Just a note of caution, the median for your array (with no zeroes) is 23.5 but as written this sticks in 23.

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Wait a minute... The median should be 26? When the non-zero element array is sorted (3 5 8 14 15 16 17 18 19 21 26 27 29 29 31 38 38 40 49 55), the value in the middle is 26. –  slashdottir Jun 12 '13 at 2:03
    
Nevermind, you're right. That's a good solution –  slashdottir Jun 12 '13 at 2:10
    
Yeah, there are 20 non-zero elements. The two in the middle are 21 and 26. The median is usually calculated as the average of the two in the middle for an even number of elements, so we get 23.5. Thanks for the upvote! –  Bo102010 Jun 12 '13 at 2:13
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foo2 = foo[:]
foo2[foo2 == 0] = nz_values[middle]

Instead of foo2, you could just update foo if you want. Numpy's smart array syntax can combine a few lines of the code you made. For example, instead of,

nonzero_values = foo[0::] > 0
nz_values = foo[nonzero_values]

You can just do

nz_values = foo[foo > 0]

You can find out more about "fancy indexing" in the documentation.

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so cool, works great, thank you! –  slashdottir Jun 12 '13 at 1:35
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