# Where can I find mad (mean absolute deviation) in scipy?

It seems scipy once provided a function `mad` to calculate the mean absolute deviation for a set of numbers:

http://projects.scipy.org/scipy/browser/trunk/scipy/stats/models/utils.py?rev=3473

However, I can not find it anywhere in current versions of scipy. Of course it is possible to just copy the old code from repository but I prefer to use scipy's version. Where can I find it, or has it been replaced or removed?

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Sorry, a search in the github repository gave me nothing. –  Rik Poggi Jan 19 '12 at 18:16
Is it so hard to write it from scratch? –  Roman Susi Jan 19 '12 at 19:12
@RomanSusi, no, but as I stated in the question, that is not the point. –  Ton van den Heuvel Jan 20 '12 at 8:21
Beware, "MAD" usually refers to the "Median absolute deviation", not the mean difference: en.wikipedia.org/wiki/Mean_absolute_difference –  Lucas Cimon Jun 28 '14 at 18:16

It looks like scipy.stats.models was removed in august 2008 due to insufficient baking. Development has migrated to `statsmodels`.

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Yes, most of the old stats.models was the basis for scikits.statsmodels, after a lot of cleanup. MAD is at the bottom page here statsmodels.sourceforge.net/rlm.html as part of robust estimation of linear models but I never used it standalone since it's just a few lines. –  user333700 Jan 20 '12 at 4:48
The above link is broken, so I found this one on the statsmodels documentation. –  gabra Apr 11 '14 at 8:35

For what its worth, I use this for MAD:

``````def mad(arr):
""" Median Absolute Deviation: a "Robust" version of standard deviation.
Indices variabililty of the sample.
https://en.wikipedia.org/wiki/Median_absolute_deviation
"""
arr = np.ma.array(arr).compressed() # should be faster to not use masked arrays.
med = np.median(arr)
return np.median(np.abs(arr - med))
``````
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I'm using:

``````from math import fabs

a = [1, 1, 2, 2, 4, 6, 9]

median = sorted(a)[len(a)//2]

for b in a:
``````
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``````from numpy import mean, absolute