Suppose I have some team data as a dataframe df.

home_team   home_score  away_team   away_score
A               3         C            1
B               1         A             0
C               3         B             2

I'd like to a dataframe indicating how many times one team has beat another. So for instance the entry in [1,3] would be the number of times team 1 has beat team 3, but the number in [3,1] would be the number of times team 3 as beat team 1.

This sounds like something df.pivot should be able to do, but I can't seem to get it to do what I would like.

How can I accomplish this using pandas?

Here is a desired output

    A B C

A   0 0 1

B   1 0 0

C   0 1 0
  • You should post a sample of how the desired output should look like. Nov 11 '16 at 1:26
  • @JoeR See my edit. So the [A,B] is the number of times A beats B, and [B,A] is the number of times B beats A. Nov 11 '16 at 1:32

This will create a new dataframe with just the winners and loosers. It can be pivoted to created what you are looking for.

I made some additional data to fill in some of the pivot table values

import pandas as pd

data = {'home_team':['A','B','C','A','B','C','A','B','C'], 
df = pd.DataFrame(d)

# create new dataframe
WL = pd.DataFrame()
WL['winner'] = pd.concat([df.home_team[df.home_score>df.away_score],
                          df.away_team[df.home_score<df.away_score]], axis=0)
WL['loser'] = pd.concat([df.home_team[df.home_score<df.away_score],
                         df.away_team[df.home_score>df.away_score]], axis=0)
WL['game'] = 1

# groupby to count the number of win/lose pairs
WL_gb = WL.groupby(['winner','loser']).count().reset_index()

# pivot the data
WL_piv = WL_gb.pivot(index='winner', columns='loser', values='game')

enter image description here


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.