9

Say I have two data frames:

df1:

  A
0 a
1 b

df2:

  A
0 a
1 c

I want the result to be the union of the two frames with an extra column showing the source data frame that the row belongs to. In case of duplicates, duplicates should be removed and the respective extra column should show both sources:

  A  B
0 a  df1, df2
1 b  df1
2 c  df2

I can get the concatenated data frame (df3) without duplicates as follows:

import pandas as pd
df3=pd.concat([df1,df2],ignore_index=True).drop_duplicates().reset_index(drop=True)

I can't think of/find a method to have control over what element goes where. How can I add the extra column?

Thank you very much for any tips.

12

Merge with an indicator argument, and remap the result:

m = {'left_only': 'df1', 'right_only': 'df2', 'both': 'df1, df2'}

result = df1.merge(df2, on=['A'], how='outer', indicator='B')
result['B'] = result['B'].map(m)

result
   A         B
0  a  df1, df2
1  b       df1
2  c       df2
  • Nice and succinct! – cph_sto Jan 22 at 19:53
  • @cph_sto Thank you! Upvoted back. – coldspeed Jan 22 at 19:55
  • 1
    I have learnt a lot from you. – cph_sto Jan 22 at 19:56
  • Excellent! Could you add how to do the same for intersection? outer->inner? – Leon Rai Jan 22 at 20:28
  • 1
    @LeonRai df1.merge(df2, on=['A'], how='inner').assign(B='df1, df2') (since intersection implies membership in both) – coldspeed Jan 22 at 20:29
2

We use outer join to solve this -

df1 = pd.DataFrame({'A':['a','b']})
df2 = pd.DataFrame({'A':['a','c']})
df1['col1']='df1'
df2['col2']='df2'
df=pd.merge(df1, df2, on=['A'], how="outer").fillna('')
df['B']=df['col1']+','+df['col2']
df['B'] = df['B'].str.strip(',')
df=df[['A','B']]
df

   A        B
0  a  df1,df2
1  b      df1
2  c      df2
  • thank you for the answer! – Leon Rai Jan 22 at 20:31
  • pleasure Leon :) – cph_sto Jan 22 at 20:38
2

Use the command below:

df3 = pd.concat([df1.assign(source='df1'), df2.assign(source='df2')]) \
    .groupby('A') \
    .aggregate(list) \
    .reset_index()

The result will be:

   A      source
0  a  [df1, df2]
1  b       [df1]
2  c       [df2]

The assign will add a column named source with value df1 and df2 to your dataframes. groupby command groups rows with same A value to single row. aggregate command describes how to aggregate other columns (source) for each group of rows with same A. I have used list aggregate function so that the source column be the list of values with same A.

  • thank you for the answer! – Leon Rai Jan 22 at 20:31

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