24

Given a dataframe that looks like this:

            A   B      
2005-09-06  5  -2  
2005-09-07 -1   3  
2005-09-08  4   5 
2005-09-09 -8   2
2005-09-10 -2  -5
2005-09-11 -7   9 
2005-09-12  2   8  
2005-09-13  6  -5  
2005-09-14  6  -5  

Is there a pythonic way to create a 2x2 matrix like this:

    1  0
 1  a  b
 0  c  d

Where:

a = number of obs where the corresponding elements of column A and B are both positive.

b = number of obs where the corresponding elements of column A are positive and negative in column B.

c = number of obs where the corresponding elements of column A are negative and positive in column B.

d = number of obs where the corresponding elements of column A and B are both negative.

For this example the output would be:

    1  0
 1  2  3
 0  3  1

Thanks

21

Let us call your dataframe data. Try

a = data['A']>0
b = data['B']>0
data.groupby([a,b]).count() 
2
  • 4
    Whoever downvoted this answer: please leave a comment - why. – lanenok Aug 19 '16 at 14:41
  • This answer creates a dataframe with two indices, and not the desired contingency table format where those two indices are in X and Y axis respectively – Jay Dec 19 '20 at 19:08
37

Probably easiest to just use the pandas function crosstab. Borrowing from Dyno Fu above:

import pandas as pd
from StringIO import StringIO
table = """dt          A   B
2005-09-06  5  -2
2005-09-07 -1   3
2005-09-08  4   5
2005-09-09 -8   2
2005-09-10 -2  -5
2005-09-11 -7   9
2005-09-12  2   8
2005-09-13  6  -5
2005-09-14  6  -5
"""
sio = StringIO(table)
df = pd.read_table(sio, sep=r"\s+", parse_dates=['dt'])
df.set_index("dt", inplace=True)

pd.crosstab(df.A > 0, df.B > 0)

Output:

B      False  True 
A                  
False      1      3
True       3      2

[2 rows x 2 columns]

Also the table is usable if you want to do a Fisher exact test with scipy.stats etc:

from scipy.stats import fisher_exact
tab = pd.crosstab(df.A > 0, df.B > 0)
fisher_exact(tab)
1
  • Thanks! I appreciate your efforts. – vy32 Jun 20 '16 at 12:40
10

Here's a really useful page about the pandas crosstab function:

https://chrisalbon.com/python/data_wrangling/pandas_crosstabs/

So I think for what you'd like to do you should use

import pandas as pd
pd.crosstab(data['A']>0, data['B']>0)

Hope that helps!

1
5
import pandas as pd
from StringIO import StringIO

table = """dt          A   B
2005-09-06  5  -2
2005-09-07 -1   3
2005-09-08  4   5
2005-09-09 -8   2
2005-09-10 -2  -5
2005-09-11 -7   9
2005-09-12  2   8
2005-09-13  6  -5
2005-09-14  6  -5
"""
sio = StringIO(table)
df = pd.read_table(sio, sep=r"\s+", parse_dates=['dt'])
df.set_index("dt", inplace=True)

a = df['A'] > 0
b = df['B'] > 0
df1 = df.groupby([a,b]).count()
print df1["A"].unstack()

output:

B      False  True
A
False      1      3
True       3      2

this is just lnanenok's answer and using unstack() to make it more readable. credit should go to lanenok.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.