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I have two dataframes corresponding to my train and test data respectively. They both have a column called 'Location'. I want to see which values in the 'location' column are the same in both the train and test dataframes and which values are not. So for example given two df:

df_train:
i  loc
0  10  
1  11  
2  12  

df_test:
i  loc
0  10  
1  12  
2  13
3  17 

I would need it to return that 10 and 12 are in both dataframes, and that 11, 13 and 17 are only in df_test.Below is what I have tried:

df_t["match_location"] = np.where(df_tst["location_remapped"] == df_t["location_remapped"], "True", "False")

However I run into this error as both df are different lengths:

ValueError                                Traceback (most recent call last)
<ipython-input-49-51941d90b84e> in <module>()
----> 1 df_t["match_location"] = np.where(df_tst["location_remapped"] == df_t["location_remapped"], "True", "False")

2 frames
/usr/local/lib/python3.7/dist-packages/pandas/core/ops/common.py in new_method(self, other)
     67         other = item_from_zerodim(other)
     68 
---> 69         return method(self, other)
     70 
     71     return new_method

/usr/local/lib/python3.7/dist-packages/pandas/core/arraylike.py in __eq__(self, other)
     30     @unpack_zerodim_and_defer("__eq__")
     31     def __eq__(self, other):
---> 32         return self._cmp_method(other, operator.eq)
     33 
     34     @unpack_zerodim_and_defer("__ne__")

/usr/local/lib/python3.7/dist-packages/pandas/core/series.py in _cmp_method(self, other, op)
   5494 
   5495         if isinstance(other, Series) and not self._indexed_same(other):
-> 5496             raise ValueError("Can only compare identically-labeled Series objects")
   5497 
   5498         lvalues = self._values

ValueError: Can only compare identically-labeled Series objects

Does anyone have a way around this?

1
  • Do you need to verify only the values in the dataframe or also the position of each value (the index)? May 4 at 9:54

1 Answer 1

2

If no duplicates in loc columns use DataFrame.merge with outer join and parameter indicator:

df = df_train.merge(df_test, on='loc', indicator='match_location', how='outer')
print (df)
   loc match_location
0   10           both
1   11      left_only
2   12           both
3   13     right_only
4   17     right_only

For boolean column compare by both:

df['match_location'] = df['match_location'].eq('both')
print (df)
   loc  match_location
0   10            True
1   11           False
2   12            True
3   13           False
4   17           False

If possible duplicates first remove them:

df = (df_train.drop_duplicates('loc')
             .merge(df_test.drop_duplicates('loc'), 
                    on='loc', 
                    indicator='match_location',
                    how='outer'))

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