# How to divide the selected element with the sum values in the row, except the values on the diagonal PANDAS

I am doing some statistics.

I have data frame:

tag a   b    c   d   e   f
a  5   2    3   2   0   1
b  2   4    3   2   0   1
c  3   4    3   2   0   3
d  2   4    3   2   0   1
e  0   4    3   2   0   8
f  1   4    3   2   0   1

I want to create new dataframe:

tag a   b    c   d   e   f
a  0   x
b      0
c           0
d               0
e                   0   Y
f                       0

where x would be equal the correspodenting element on that place, divided with the sum of elements in that row, except the element on the diagonal. So the X is: X = 2/(2+3+2+0+1)

And for the example Y = 8/(0+4+3+2+8)

After that I need to add one more column which will be calculated: -sum[each element in the row * log (of that element)]

I am sorry for this trivial question, I used to work in R, and for this task I need to work in pandas.

• Why is e, e 9? – user3483203 Mar 11 at 18:05
• that's mistake. sry :/ – Anajlim Mar 11 at 18:42

Use np.fill_diagonal to mask diagonal elements, then perform index aligned division using DataFrame.div:

u = df.set_index('tag')
np.fill_diagonal(u.values, 0)

v = u.div(u.sum(axis=1), axis=0)
v

a         b         c         d    e         f
tag
a    0.00  0.250000  0.375000  0.250000  0.0  0.125000
b    0.25  0.000000  0.375000  0.250000  0.0  0.125000
c    0.25  0.333333  0.000000  0.166667  0.0  0.250000
d    0.20  0.400000  0.300000  0.000000  0.0  0.100000
e    0.00  0.235294  0.176471  0.117647  0.0  0.470588
f    0.10  0.400000  0.300000  0.200000  0.0  0.000000

"After that I need to add one more column which will be calculated: -sum[each element in the row * log (of that element)]"

You can do this with

v

a         b         c         d    e         f   log_sum
tag
a    0.00  0.250000  0.375000  0.250000  0.0  0.125000 -8.965402
b    0.25  0.000000  0.375000  0.250000  0.0  0.125000 -8.965402
c    0.25  0.333333  0.000000  0.166667  0.0  0.250000 -8.461294
d    0.20  0.400000  0.300000  0.000000  0.0  0.100000 -9.560926
e    0.00  0.235294  0.176471  0.117647  0.0  0.470588 -9.708363
f    0.10  0.400000  0.300000  0.200000  0.0  0.000000 -9.560926
• X = .25, Y = .47 (cross-verify with the OP) – cs95 Mar 11 at 18:01
• Thank you! And how to add the new column which would be calculate by formula: -sum[each element in the row * log (of that element)] ? – Anajlim Mar 11 at 19:28
• @Anajlim Take a look at the edit? – cs95 Mar 11 at 19:35
• Thank you. :) You made my day. <3 – Anajlim Mar 11 at 19:57

numpy.eye + a bit of arithmetic

u = df.iloc[:, 1:].values
x, _ = df.shape
m = 1 - np.eye(x)
n = u * m
n / n.sum(1, keepdims=1)

array([[0.   , 0.25 , 0.375, 0.25 , 0.   , 0.125],
[0.25 , 0.   , 0.375, 0.25 , 0.   , 0.125],
[0.25 , 0.333, 0.   , 0.167, 0.   , 0.25 ],
[0.2  , 0.4  , 0.3  , 0.   , 0.   , 0.1  ],
[0.   , 0.235, 0.176, 0.118, 0.   , 0.471],
[0.1  , 0.4  , 0.3  , 0.2  , 0.   , 0.   ]])

To maintain the original frame:

pd.DataFrame(index=df.tag, data=n / n.sum(1, keepdims=1), columns=df.columns[1:])

a         b         c         d    e         f
tag
a    0.00  0.250000  0.375000  0.250000  0.0  0.125000
b    0.25  0.000000  0.375000  0.250000  0.0  0.125000
c    0.25  0.333333  0.000000  0.166667  0.0  0.250000
d    0.20  0.400000  0.300000  0.000000  0.0  0.100000
e    0.00  0.235294  0.176471  0.117647  0.0  0.470588
f    0.10  0.400000  0.300000  0.200000  0.0  0.000000

One more possibility using np.identity with boolean values.

df = df.mul(~np.identity(len(df), dtype=np.bool))
df.div(df.sum(1), 0)

a       b           c           d           e   f
a   0.00    0.250000    0.375000    0.250000    0.0 0.125000
b   0.25    0.000000    0.375000    0.250000    0.0 0.125000
c   0.25    0.333333    0.000000    0.166667    0.0 0.250000
d   0.20    0.400000    0.300000    0.000000    0.0 0.100000
e   0.00    0.235294    0.176471    0.117647    0.0 0.470588
f   0.10    0.400000    0.300000    0.200000    0.0 0.000000