# Pandas: Group by combination of two columns

I have data as follows. The score column is the score of x vs y (which is equivalent to y vs x).

``````from collections import Counter
import pandas as pd

d = pd.DataFrame([('a','b',1), ('a','c', 2), ('b','a',3), ('b','a',3)],
columns=['x', 'y', 'score'])

x   y   score
0   a   b   1
1   a   c   2
2   b   a   3
3   b   a   3
``````

I want to evaluate the count of the score of each combination, so ('a' vs 'b) and ('b' vs 'a') should be grouped together, i.e.

``````        score
x   y
a   b   {1: 1, 3: 2}
c   {2: 1}
``````

However if I do `d.groupby(['x', 'y']).agg(Counter)`, ('a', 'b') and ('b', 'a') are not combined together. Is there a way to solve this? Thanks!

``````        score
x   y
a   b   {1: 1}
c   {2: 1}
b   a   {3: 2}
``````

If you do not care about order then, may be you can use `sort` on two columns then, apply, `groupby`:

``````import pandas as pd
from collections import Counter

d = pd.DataFrame([('a','b',1), ('a','c', 2), ('b','a',3), ('b','a',3)],
columns=['x', 'y', 'score'])
# Note: you can copy to other dataframe if you do not want to change original
d[['x', 'y']] = d[['x', 'y']].apply(sorted, axis=1)
x = d.groupby(['x', 'y']).agg(Counter)
print(x)
# Result:
#             score
# x y
# a b  {1: 1, 3: 2}
#   c        {2: 1}
``````

You can also `groupby` using the aggregated `frozenset` of `x` and `y` and then `agg` using `Counter`

``````from collections import Counter
df.groupby(df[['x', 'y']].agg(frozenset, 1)).score.agg(Counter)

(b, a)    {1: 1, 3: 2}
(a, c)          {2: 1}
``````

If you want a `dataframe`,

``````.to_frame()

score
(b, a)  {1: 1, 3: 2}
(a, c)  {2: 1}
``````

IIUC

``````d[['x','y']]=np.sort(d[['x','y']],1)
pd.crosstab([d.x,d.y],d.score)
Out:
score  1  2  3
x y
a b    1  0  2
c    0  1  0
``````