13

I have a DataFrame df:

name   count    
aaaa   2000    
bbbb   1900    
cccc    900    
dddd    500    
eeee    100

I would like to look at the rows that are within a factor of 10 from the median of the count column.

I tried df['count'].median() and got the median. But don't know how to proceed further. Can you suggest how I could use pandas/numpy for this.

Expected Output :

name count distance from median

aaaa  2000   *****

I can use any measure as the distance from median (absolute deviation from median, quantiles etc.).

2
  • What is your expected output?
    – Zero
    Apr 21, 2015 at 17:00
  • Expected output is now shown in original post
    – Ssank
    Apr 21, 2015 at 17:01

3 Answers 3

27

If you're looking for how to calculate the Median Absolute Deviation -

In [1]: df['dist'] = abs(df['count'] - df['count'].median())

In [2]: df
Out[2]:
   name  count  dist
0  aaaa   2000  1100
1  bbbb   1900  1000
2  cccc    900     0
3  dddd    500   400
4  eeee    100   800

In [3]: df['dist'].median()
Out[3]: 800.0
4

If you want to see the median, you can use df.describe(). The 50% value is the median.

2
  • can you also mention what does the 25% and 75% REALLY mean?
    – Prometheus
    Mar 2, 2019 at 15:13
  • @Prometheus that would be the first and third quartile of the list respectively. Jan 9, 2020 at 6:38
1

Median absolute deviation,

                                               enter image description here

for a column could also be calculated using statsmodels.robust.scale.mad, which can also be passed a normalization constant c which in this case is just 1.

>>> from statsmodels.robust.scale import mad
>>> mad(df['count'], c=1)
800.0

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.