4

Problem

I have a pandas dataframe, and I need count how many rows are there where each unique entry in the dataframe occurs within the same row of each other entry.


Related but different posts


Reproducible Setup

import pandas as pd
import numpy as np

The dataframe:

df = pd.DataFrame({'a': ['A', 'A', 'B', 'B'],
                   'b': ['B', 'C', 'B', 'B'],
                   'c': ['C', 'A', 'C', 'A'],
                   'd': ['B', 'D', 'B', 'A']},
                   index=[0, 1, 2, 3])

ie:

+----+-----+-----+-----+-----+
|    | a   | b   | c   | d   |
|----+-----+-----+-----+-----|
|  0 | A   | B   | C   | B   |
|  1 | A   | C   | A   | D   |
|  2 | B   | B   | C   | B   |
|  3 | B   | B   | A   | A   |
+----+-----+-----+-----+-----+

(Printed using this.)


What I have tried

I have tried to use the code from answer, & substituting these variables:

document = [list(each) for each in df.values]
names = list(np.unique(df.values))

It gave the wrong results:

  A B C D
A 4 6 3 2
B 6 10 5 0
C 3 5 0 1
D 2 0 1 0

It is based on iteratations, so I would hope for a better solution.


Expected Output

+----+-----+-----+-----+-----+
|    |   A |   B |   C |   D |
|----+-----+-----+-----+-----|
| A  | nan |   2 |   2 |   1 |
| B  |   2 | nan |   2 |   0 |
| C  |   2 |   2 | nan |   1 |
| D  |   1 |   0 |   1 | nan |
+----+-----+-----+-----+-----+

There are 2 rows where A & B both appears, so the value in the cell row A column B is 2. There are 2 rows where A & C both appears, so the value in the cell row A column C is 2.


Question

How can I get this row-wise cooccurence matrix easily in Pandas? It would be great if I didn't have to loop through the values.


(pandas.Categorical might be some use, I haven't managed to make it work yet.)

2
  • You have two row contain AC :-)
    – BENY
    Aug 26, 2020 at 13:35
  • Oh yep, true! Corrected! :) (sorry)
    – zabop
    Aug 26, 2020 at 13:40

1 Answer 1

4

WE can do stack then get_dummies and dot then value

s=df.stack().str.get_dummies().sum(level=0).ne(0).astype(int)
s=s.T.dot(s).astype(float)
np.fill_diagonal(s.values, np.nan)
s
Out[33]: 
     A    B    C    D
A  NaN  2.0  2.0  1.0
B  2.0  NaN  2.0  0.0
C  2.0  2.0  NaN  1.0
D  1.0  0.0  1.0  NaN

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