# Pandas DataFrame matrix based calculation

I have a Pandas DataFrame as following. It shows how users have accessed pages p1 to p4 in each session.

``````df = pd.DataFrame([[1,1,1,0,1],[2,1,1,0,1],[3,1,1,1,1],[4,0,1,0,1]])
df.columns = ['session','p1','p2','p3','p4']
``````

Following is the matrix which shows the intersection of pages accessed by common.

``````In [20]: df.dot(df.T)
Out[20]:
session  1  2  3  4
session
1        3  3  3  2
2        3  3  3  2
3        3  3  4  2
4        2  2  2  2
``````

I need to calculate a value according to the following formula.

``````s1 = No of pages accessed in common/(total no of pages in si*total no of pages in sj)^(1/2)
``````

That is for session 1 and 2

``````No of pages accessed in common = 3
total no of pages in s1*total no of pages in s2 = 3*3
s1 = 3/9^(1/2) = 1
``````

for session 2 and 4

``````No of pages accessed in common = 2
total no of pages in s1*total no of pages in s2 = 3*2
s1 = 2/6^(1/2) = 0.8164
``````

Couldn’t achieve this.

-
I get a different value for df.dot(df.T) :S ...ah, I get the same if session is the index. –  Andy Hayden Feb 3 '14 at 7:47
@Andy Hayden : Hey Andy session is the index. –  Nilani Algiriyage Feb 3 '14 at 8:15

I think you are looking for `numpy.outer`:

``````In [10]: df1 = df.set_index('session')
common = df1.dot(df1.T)

In [11]: df1.sum(1)
Out[11]:
session
1          3
2          3
3          4
4          2
dtype: int64

In [12]: np.outer(*[df1.sum(1)] * 2)  # same as np.outer(df1.sum(1), df1.sum(1))
Out[12]:
array([[ 9,  9, 12,  6],
[ 9,  9, 12,  6],
[12, 12, 16,  8],
[ 6,  6,  8,  4]])

In [13]: np.sqrt(np.outer(*[df1.sum(1)] * 2))
Out[13]:
array([[ 3.        ,  3.        ,  3.46410162,  2.44948974],
[ 3.        ,  3.        ,  3.46410162,  2.44948974],
[ 3.46410162,  3.46410162,  4.        ,  2.82842712],
[ 2.44948974,  2.44948974,  2.82842712,  2.        ]])

In [14]: common / np.sqrt(np.outer(*[df1.sum(1)] * 2))
Out[14]:
session         1         2         3         4
session
1        1.000000  1.000000  0.866025  0.816497
2        1.000000  1.000000  0.866025  0.816497
3        0.866025  0.866025  1.000000  0.707107
4        0.816497  0.816497  0.707107  1.000000
``````
-
Excellent! This is it! Thanks Very Much! –  Nilani Algiriyage Feb 3 '14 at 8:18