I have a transaction dataframe where the customers are categorized as rich and poor.
I want to see if it's mostly rich or poor people going to each shop.
print(df.sample(10))
Shop Transaction_value Social Group
7 KFC 7 Rich
22 Burger King 342 Rich
19 Burger King 6 Rich
5 KFC 2 Poor
14 McDonalds 245 Rich
2 KFC 3 Poor
16 McDonalds 56 Poor
6 KFC 6 Poor
20 Burger King 23 Poor
8 KFC 5 Poor
I have made it most of the way:
df.groupby(['Shop', 'Social Group'])["Transaction_value"].count()
Shop Social Group
Burger King Poor 7
Rich 3
KFC Poor 6
Rich 3
McDonalds Poor 3
Rich 6
I can see that Burger King attracts mostly poor people. And McDonalds attracts mostly rich people.
But how can I extract just that information? i.e. the social group that goes to each shop the most.
I am trying to get a result like this:
Shop Social Group
Burger King Poor
KFC Poor
McDonalds Rich
I have check some other questions here that use idxmax()
but I couldn't get it to work:
df.groupby(['Shop', 'Social Group'])["Transaction_value"].count().idxmax()
('Burger King', 'Poor')
I have also used max()
unsuccessfully:
df.groupby(['Shop', 'Social Group'])["Transaction_value"].count().max(level=0)
Shop
Burger King 7
KFC 6
McDonalds 6
Any advice?
My df:
df.to_dict()
{'Shop': {0: 'KFC',
1: 'KFC',
2: 'KFC',
3: 'KFC',
4: 'KFC',
5: 'KFC',
6: 'KFC',
7: 'KFC',
8: 'KFC',
9: 'McDonalds',
10: 'McDonalds',
11: 'McDonalds',
12: 'McDonalds',
13: 'McDonalds',
14: 'McDonalds',
15: 'McDonalds',
16: 'McDonalds',
17: 'McDonalds',
18: 'Burger King',
19: 'Burger King',
20: 'Burger King',
21: 'Burger King',
22: 'Burger King',
23: 'Burger King',
24: 'Burger King',
25: 'Burger King',
26: 'Burger King',
27: 'Burger King'},
'Transaction_value': {0: 1,
1: 2,
2: 3,
3: 34,
4: 2,
5: 2,
6: 6,
7: 7,
8: 5,
9: 4,
10: 3,
11: 2,
12: 12,
13: 31,
14: 245,
15: 123,
16: 56,
17: 67,
18: 68,
19: 6,
20: 23,
21: 44,
22: 342,
23: 234,
24: 3,
25: 234,
26: 666,
27: 88},
'Social Group': {0: 'Poor',
1: 'Rich',
2: 'Poor',
3: 'Poor',
4: 'Rich',
5: 'Poor',
6: 'Poor',
7: 'Rich',
8: 'Poor',
9: 'Rich',
10: 'Rich',
11: 'Rich',
12: 'Rich',
13: 'Rich',
14: 'Rich',
15: 'Poor',
16: 'Poor',
17: 'Poor',
18: 'Poor',
19: 'Rich',
20: 'Poor',
21: 'Poor',
22: 'Rich',
23: 'Poor',
24: 'Poor',
25: 'Rich',
26: 'Poor',
27: 'Poor'}}