# DataFrame subtract group-wise means

I have a DataFrame with columns that can be divided into different groups. I need to return a df where the entries are the original values minus the group mean.
I did the following by using groupby which gives me the group means.

``````base = datetime.today().date()
date_list = [base - timedelta(days=x) for x in range(0, 10)]
df = pd.DataFrame(data=np.random.randint(1, 100, (10, 8)), index=date_list, columns=['a1', 'a2', 'b1', 'a3', 'b2', 'c1' , 'c2', 'b3'])

xx = df.loc[[datetime(2016, 5, 18).date()]]
xx.index = ['group']
xx.a1 = 1
xx.a2 = 1
xx.a3 = 1
xx.b3 = 2
xx.b2 = 2
xx.b1 = 2
xx.c1 = 3
xx.c2 = 3
df = df.append(xx)
dft = df.T
dft.groupby(['group']).mean().T
``````

Update 20/05/16:

Aided by unutbu's answer, I come up the following solution as well:

``````df.T.groupby(group, axis=0).apply(lambda x: x - np.mean(x)).T
``````

If you use the `transform` method, e.g.,

``````means = df.groupby(group, axis=1).transform('mean')
``````

then `transform` will a DataFrame of the same shape as `df`. This makes it easier to subtract `means` from `df`.

You can also pass a sequence, such as `group=[1,1,1,2,2,3,3]` to `df.groupby` instead of passing a column name. `df.groupby(group, axis=1)` will group the columns based on the sequence values. So, for example, to group according to the non-numeric part of each column name, you could use:

``````import numpy as np
import datetime as DT
np.random.seed(2016)
base = DT.date.today()
date_list = [base - DT.timedelta(days=x) for x in range(0, 10)]
df = pd.DataFrame(data=np.random.randint(1, 100, (10, 8)),
index=date_list,
columns=['a1', 'a2', 'b1', 'a3', 'b2', 'c1' , 'c2', 'b3'])

group = df.columns.str.extract(r'(\D+)', expand=False)
means = df.groupby(group, axis=1).transform('mean')
result = df - means
print(result)
``````

which yields

``````            a1  a2  b1  a3  b2  c1  c2  b3
2016-05-18  29  29  53  29  53  23  23  53
2016-05-17  55  55  32  55  32  92  92  32
2016-05-16  59  59  53  59  53  50  50  53
2016-05-15  46  46  30  46  30  55  55  30
2016-05-14  56  56  28  56  28  28  28  28
2016-05-13  34  34  36  34  36  70  70  36
2016-05-12  39  39  64  39  64  48  48  64
2016-05-11  45  45  59  45  59  57  57  59
2016-05-10  55  55  30  55  30  37  37  30
2016-05-09  61  61  59  61  59  59  59  59
``````
• Thanks very much for the help. I got the error 'Length mismatch: Expected axis has 10 elements, new values have 8 elements' when I run the .transform line. I am using Python 2.7 Commented May 18, 2016 at 13:09
• I got the solution: df.T.groupby(group, axis=0).apply(lambda x: x - np.mean(x)).T. Interestingly I do not find much about the groupby.aggregate/transform/apply where there is no axis option in apply() so I have to transform it twice. Commented May 18, 2016 at 13:10