5

Is it somehow possible to use pandas.drop_duplicates with a comparison operator which compares two objects in a particular column in order to identify duplicates? If not, what is the alternative?

Here is an example where it could be used:

I have a pandas DataFrame which has lists as values in a particular column and I would like to have duplicates removed based on column A

import pandas as pd

df = pd.DataFrame( {'A': [[1,2],[2,3],[1,2]]} )
print df

giving me

        A
0  [1, 2]
1  [2, 3]
2  [1, 2]

Using pandas.drop_duplicates

df.drop_duplicates( 'A' )

gives me a TypeError

[...]
TypeError: type object argument after * must be a sequence, not itertools.imap

However, my desired result is

        A
0  [1, 2]
1  [2, 3]

My comparison function would be here:

def cmp(x,y):
    return x==y

But in principle it could be something else, e.g.,

def cmp(x,y):
    return x==y and len(x)>1

How can I remove duplicates based on the comparison function in a efficient way?

Even more, what could I do if I had more columns to compare using a different comparison function, respectively?

3 Answers 3

6

IIUC, your question is how to use an arbitrary function to determine what is a duplicate. To emphasize this, let's say that two lists are duplicates if the sum of the first item, plus the square of the second item, is the same in each case

In [59]: In [118]: df = pd.DataFrame( {'A': [[1,2],[4,1],[2,3]]} )

(Note that the first and second lists are equivalent, although not same.)

Python typically prefers key functions to comparison functions, so here we need a function to say what is the key of a list; in this case, it is lambda l: l[0] + l[1]**2.

We can use groupby + first to group by the values of the key function, then take the first of each group:

In [119]: df.groupby(df.A.apply(lambda l: l[0] + l[1]**2)).first()
Out[119]: 
         A
A         
5   [1, 2]
11  [2, 3]

Edit

Following further edits in the question, here are a few more examples using

df = pd.DataFrame( {'A': [[1,2],[2,3],[1,2], [1], [1], [2]]} )

Then for

def cmp(x,y):
    return x==y

this could be

In [158]: df.groupby(df.A.apply(tuple)).first()
Out[158]: 
             A
A             
(1,)       [1]
(1, 2)  [1, 2]
(2,)       [2]
(2, 3)  [2, 3]

for

def cmp(x,y):
     return x==y and len(x)>1

this could be

In [184]: class Key(object):
   .....:     def __init__(self):
   .....:         self._c = 0
   .....:     def __call__(self, l):
   .....:         if len(l) < 2:
   .....:             self._c += 1
   .....:             return self._c
   .....:         return tuple(l)
   .....:     

In [187]: df.groupby(df.A.apply(Key())).first()
Out[187]: 
             A
A             
1          [1]
2          [1]
3          [2]
(1, 2)  [1, 2]
(2, 3)  [2, 3]

Alternatively, this could also be done much more succinctly via

In [190]: df.groupby(df.A.apply(lambda l: np.random.rand() if len(l) < 2 else tuple(l))).first()
Out[190]: 
                     A
A                     
0.112012068449     [2]
0.822889598152     [1]
0.842630848774     [1]
(1, 2)          [1, 2]
(2, 3)          [2, 3]

but some people don't like these Monte-Carlo things.

9
  • Need to be careful with that df.A.apply(sum) - throw a [0, 3] and a [10, -5] in there and you're going to get confused... Sep 15, 2016 at 9:16
  • @JonClements Not sure I see your point. I tried to show in the answer how to use an arbitrary function for equivalence, using list sum as an example. IIUC, you're suggesting adding to equivalent elements (using this criteria) to those already there, and, indeed, they are removed.
    – Ami Tavory
    Sep 15, 2016 at 9:21
  • 1
    Ahhh right... while I appreciate it's an example and it's probably just me - but I just think using sum is a rather misleading example as [0, 3] is not intuitively a duplicate of [1, 2] (going by the OPs data)... But re-reading it, yes, I see your point that you're demonstrating groupby/first - I just personally feel that either tuple or frozenset might be a better choice in this case... Sep 15, 2016 at 9:30
  • ... both of course have caveats... a tuple won't catch your [1,2] and [2, 1] but a frozenset will, but that'd also catch [1, 1, 2] and [2, 1] - so I'd probably take a stab that df.groupby(df.A.apply(sorted).apply(tuple), as_index=False).first() is a reasonable candidate... Sep 15, 2016 at 9:33
  • @JonClements Thanks for these valuable points - appreciated! I'll find a better example (that doesn't have a simpler / more efficient alternative.
    – Ami Tavory
    Sep 15, 2016 at 9:34
4

Option 1

df[~pd.DataFrame(df.A.values.tolist()).duplicated()]

enter image description here

Option 2

df[~df.A.apply(pd.Series).duplicated()]
2
  • This is very efficient and clear for the case the OP is asking.
    – Ami Tavory
    Sep 15, 2016 at 9:39
  • 1
    This is a nice solution for the example gave. But I'm looking for something more general using an abitrary function for the identification of duplicates in a column.
    – desiato
    Sep 15, 2016 at 11:11
3

Lists are unhashable in nature. Try converting them to hashable types such as tuples and then you can continue to use drop_duplicates:

df['A'] = df['A'].map(tuple)
df.drop_duplicates('A').applymap(list)

Image


One way of implementing it using a function would be based on computing value_counts of the series object, as duplicated values get aggregated and we are interested in only the index part (which by the way is unique) and not the actual count part.

def series_dups(col_name):
    ser = df[col_name].map(tuple).value_counts(sort=False)
    return (pd.Series(data=ser.index.values, name=col_name)).map(list)

series_dups('A')

0    [1, 2]
1    [2, 3]
Name: A, dtype: object

If you do not want to convert the values to tuple but rather process the values as they are, you could do:

Toy data:

df = pd.DataFrame({'A': [[1,2], [2,3], [1,2], [3,4]], 
                   'B': [[10,11,12], [11,12], [11,12,13], [10,11,12]]})
df

Image

def series_dups_hashable(frame, col_names):
    for col in col_names:
        ser, indx = np.unique(frame[col].values, return_index=True)
        frame[col] = pd.Series(data=ser, index=indx, name=col)
    return frame.dropna(how='all')

series_dups_hashable(df, ['A', 'B'])   # Apply to subset/all columns you want to check

Image

5
  • 1
    This is very efficient and clear for the case the OP is asking.
    – Ami Tavory
    Sep 15, 2016 at 9:39
  • This is a nice solution for the example I gave. But I'm looking for something more general using an abitrary function for the identification of duplicates in a column.
    – desiato
    Sep 15, 2016 at 11:17
  • @desiato: See if (my edited response) answers your purpose. Sep 15, 2016 at 12:01
  • You assume that I can convert the objects in the column into a hashable object, respectively. Is there a possibility without this assumption?
    – desiato
    Sep 15, 2016 at 12:43
  • @desiato: Yup.. I just figured it out now. (See edit) Sep 15, 2016 at 14:25

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