Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have a dataframe multi-index where each key is a tuple of two. Currently, the order of the values in the key matters: df[(k1,k2)] is not the same as df[('k2,k1')]. also, sometimes k1,k2 exists in the dataframe while k2,k1 does not.

I'm trying to average the values of a certain columns for those two entries. currently, Im doing this:

if (k1,k2) in df.index.values and not (k2,k1) in df.index.values:
    x = df[(k1,k2)]
if (k2,k1) in df.index.values and not (k1,k2) in df.index.values:
    x = df[(k2,k1)]
if (k2,k1) in df.index.values and (k1,k2) in df.index.values:
    x = (df[(k2,k1)] + df[k1,k2])/2

This is quit ugly... Im looking for something like a get_defualt method we have on a dictionary.. Is there something like this in pandas?

share|improve this question

1 Answer 1

up vote 0 down vote accepted

ix index access and mean function handle this for you. Fetch the two tuples from df.ix and apply the mean function to it: non existing keys are returned as nan values, and mean ignores nan values by default:

In [102]: df
   (26, 22)  (10, 48)  (48, 42)  (48, 10)  (42, 48)
a       311       NaN       724       879        42

In [103]: df.ix[:,[(10, 48), (48, 10)]].mean(axis=1)
a    879
dtype: float64

In [104]: df.ix[:,[(42, 48), (48, 42)]].mean(axis=1)
a    383
dtype: float64

In [105]: df.ix[:,[(26, 22), (22, 26)]].mean(axis=1)
a    311
dtype: float64
share|improve this answer
Well, that did it! I am still confused by that behavior. if you are trying to retrieve an entry that does not exist, you are getting a key error. If you are trying to retrieve more than one entry, your are getting Nan's for non existing entries. so my problem was trying to retrieve each at the time and not all simultaneously? –  idoda Nov 12 '13 at 11:45

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

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