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Say I have a dataframe my_df with column duplicates, e..g

foo bar foo hello
0   1   1   5
1   1   2   5
2   1   3   5

I would like to create another dataframe that averages the duplicates:

foo bar hello
0.5   1   5
1.5   1   5
2.5   1   5

How can I do this in Pandas?

So far I have managed to identify duplicates:

my_columns = my_df.columns
my_duplicates = print [x for x, y in collections.Counter(my_columns).items() if y > 1]

By I don't know how to ask Pandas to average them.

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1 Answer 1

up vote 3 down vote accepted

You can groupby the column index and take the mean:

In [11]: df.groupby(level=0, axis=1).mean()
Out[11]:
   bar  foo  hello
0    1  0.5      5
1    1  1.5      5
2    1  2.5      5

A somewhat trickier example is if there is a non numeric column:

In [21]: df
Out[21]:
   foo  bar  foo hello
0    0    1    1     a
1    1    1    2     a
2    2    1    3     a

The above will raise: DataError: No numeric types to aggregate. Definitely not going to win any prizes for efficiency, but here's generic method to do in this case:

In [22]: dupes = df.columns.get_duplicates()

In [23]: dupes
Out[23]: ['foo']

In [24]: pd.DataFrame({d: df[d] for d in df.columns if d not in dupes})
Out[24]:
   bar hello
0    1     a
1    1     a
2    1     a

In [25]: pd.concat(df.xs(d, axis=1) for d in dupes).groupby(level=0, axis=1).mean()
Out[25]:
   foo
0  0.5
1  1.5
2  2.5

In [26]: pd.concat([Out[24], Out[25]], axis=1)
Out[26]:
   foo  bar hello
0  0.5    1     a
1  1.5    1     a
2  2.5    1     a

I think the thing to take away is avoid column duplicates... or perhaps that I don't know what I'm doing.

share|improve this answer
    
Thanks, I get "No numeric types to aggregate", but all my columns (except the first one, which holds object for strings) hold float64 types. Any thoughts on what may be causing this? –  user815423426 May 21 '13 at 20:37
    
And it turns out that I can't call mydf.drop() to remove that str column since I get: "Reindexing only valid with uniquely valued Index objects" –  user815423426 May 21 '13 at 20:41
    
@user815423426 hmmm this seems to make it a bit trickier (I was sure previously mean etc. ignored non numeric columns...) –  Andy Hayden May 21 '13 at 20:51
    
@user815423426 updated with hacky workaround. –  Andy Hayden May 21 '13 at 21:28

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