148

From what I understand about a left outer join, the resulting table should never have more rows than the left table...Please let me know if this is wrong...

My left table is 192572 rows and 8 columns.

My right table is 42160 rows and 5 columns.

My Left table has a field called 'id' which matches with a column in my right table called 'key'.

Therefore I merge them as such:

combined = pd.merge(a,b,how='left',left_on='id',right_on='key')

But then the combined shape is 236569.

What am I misunderstanding?

3
  • 1
    Can you post some minimal data the demonstrates this (not all 200k please)?
    – Paul H
    Mar 28, 2014 at 18:41
  • @PaulH the problem is that I can't find the reason it's doing this...when I use this pd.merge on a small section of the code the resulting table is indeed only the size of the left table Mar 28, 2014 at 18:43
  • 1
    You can get an unexpected number of rows if you merge on keys having Nans.
    – BSalita
    Aug 20, 2023 at 16:49

6 Answers 6

206

You can expect this to increase if keys match more than one row in the other DataFrame:

In [11]: df = pd.DataFrame([[1, 3], [2, 4]], columns=['A', 'B'])

In [12]: df2 = pd.DataFrame([[1, 5], [1, 6]], columns=['A', 'C'])

In [13]: df.merge(df2, how='left')  # merges on columns A
Out[13]: 
   A  B   C
0  1  3   5
1  1  3   6
2  2  4 NaN

To avoid this behaviour drop the duplicates in df2:

In [21]: df2.drop_duplicates(subset=['A'])  # you can use take_last=True
Out[21]: 
   A  C
0  1  5

In [22]: df.merge(df2.drop_duplicates(subset=['A']), how='left')
Out[22]: 
   A  B   C
0  1  3   5
1  2  4 NaN
4
  • Is there a way to suppress that? In your example, I don't need to see line 0 or 1, only to see one of the 2 lines... Mar 28, 2014 at 19:15
  • 1
    @Chowza yup, drop the duplicates, edited answer to reflect that. Mar 28, 2014 at 19:22
  • 4
    Just realised, that if you do this for an inner join rather than a left one, you need to remove the duplicates in both dataframes as per this answer.
    – cardamom
    Jan 22, 2018 at 14:14
  • In my case, the keys were also matching on more than one row in the other dataframe, as Andy Hayden said, so I ended up with much more rows than wanted. But, when using the "drop_duplicates()" solution I lost many of the matches that wanted to be there (i.e. the observations were present in my left and right dataframe). The solution that worked for me was to merge on two keys, which created a match for just on one row AND gave me all the matches I needed. For an example, see: stackoverflow.com/questions/32277473/…
    – Rens
    Apr 4, 2021 at 6:01
15

A small addition on the given answers is that there is a parameter named validate which can be used to throw an error if there are duplicated IDs matched in the right table:

combined = pd.merge(a,b,how='left',left_on='id',right_on='key', validate = 'm:1')
12

There are also strategies you can use to avoid this behavior that don't involve losing the duplicated data if, for example, not all columns are duplicated. If you have

In [1]: df = pd.DataFrame([[1, 3], [2, 4]], columns=['A', 'B'])

In [2]: df2 = pd.DataFrame([[1, 5], [1, 6]], columns=['A', 'C'])

One way would be to take the mean of the duplicate (can also take the sum, etc...)

In [3]: df3 = df2.groupby('A').mean().reset_index()

In [4]: df3
Out[4]: 
     C
A     
1  5.5

In [5]: merged = pd.merge(df,df3,on=['A'], how='outer')

In [6]: merged
Out[204]: 
   A  B    C
0  1  3  5.5
1  2  4  NaN

Alternatively, if you have non-numeric data that cannot be converted using pd.to_numeric() or if you simply do not want to take the mean, you can alter the merging variable by enumerating the duplicates. However, this strategy would apply when the duplicates exist in both datasets (which would cause the same problematic behavior and is also a common problem):

In [7]: df = pd.DataFrame([['a', 3], ['b', 4],['b',0]], columns=['A', 'B'])

In [8]: df2 = pd.DataFrame([['a', 3], ['b', 8],['b',5]], columns=['A', 'C'])

In [9]: df['count'] = df.groupby('A')['B'].cumcount()

In [10]: df['A'] = np.where(df['count']>0,df['A']+df['count'].astype(str),df['A'].astype(str))

In[11]: df
Out[11]: 
    A  B  count
0   a  3      0
1   b  4      0
2  b1  0      1

Do the same for df2, drop the count variables in df and df2 and merge on 'A':

In [16]: merged
Out[16]: 
    A  B  C
0   a  3  3        
1   b  4  8        
2  b1  0  5        

A couple of notes. In this last case I use .cumcount() instead of .duplicated because it could be the case that you have more than one duplicate for a given observation. Also, I use .astype(str) to convert the count values to strings because I use the np.where() command, but using pd.concat() or something else might allow for different applications.

Finally, if it is the case that only one dataset has the duplicates but you still want to keep them then you can use the first half of the latter strategy to differentiate the duplicates in the resulting merge.

0

There could be multiple entries with same key value(s). Make sure there is no duplicates with respect to key in right table.

# One workaround could be remove duplicates from right table w.r.t key.

combined = pd.merge(a.reset_index(),b.drop_duplicates(['key']),how='left',left_on='id',right_on='key')


0

To fix this , create a Unique INDEX column in the LEFT DataFrame, so you can track this "INDEX" column for "Duplicates" after you have the "Merged Dataframe" ready.

 1. LEFT_df['INDEX'] = LEFT_df.index + 1
 2. LEFT_df.shape 
 3. Merged_df = pd.merge(LEFT_df , Right_df , how = "left", on = 'Common column')
 4. LEFT_df['INDEX'].duplicated().sum()
 5. Merged_df = Merged_df.drop_duplicates(subset=['INDEX'], keep='first')
 6. Merged_df.shape (will now match with the LEFT_df.shape)
-2

use drop_duplicates in your case will be:

merged = pd.merge(df,df3,on=['A'], how='outer').drop_duplicates()

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