11
from itertools import product
import pandas as pd

df = pd.DataFrame.from_records(product(range(10), range(10)))
df = df.sample(90)
df.columns = "c1 c2".split()
df = df.sort_values(df.columns.tolist()).reset_index(drop=True)
#     c1  c2
# 0    0   0
# 1    0   1
# 2    0   2
# 3    0   3
# 4    0   4
# ..  ..  ..
# 85   9   4
# 86   9   5
# 87   9   7
# 88   9   8
# 89   9   9
# 
# [90 rows x 2 columns]

How do I quickly find identify and remove the last duplicate of all symmetric pairs in this dataframe?

By symmetric pair I mean that (0, 1) is equal to (1, 0). The latter should be removed.

It needs to be fast, so numpy solutions are appreciated. No converting to python objects please :)

  • 1
    Could you give an example of what you understand by symmetric pairs? – yatu Oct 28 at 14:21
  • (0, 1) == (1,0) is True – The Unfun Cat Oct 28 at 14:21
  • 1
    Is (0, 1) == (0, 1) also True? – Jerry M. Oct 28 at 14:24
  • @JerryM. Yes, but it is trivial to remove with df.drop_duplicates() – The Unfun Cat Oct 28 at 14:25
  • 2
    @molybdenum42 I use itertools product to create an example, the data themselves are not created with itertools product. – The Unfun Cat Oct 28 at 14:27
10

You can sort the values, then groupby:

a= np.sort(df.to_numpy(), axis=1)
df.groupby([a[:,0], a[:,1]], as_index=False, sort=False).first()

Option 2: If you have a lot of pairs c1, c2, groupby can be slow. In that case, we can assign new values and filter by drop_duplicates:

a= np.sort(df.to_numpy(), axis=1) 

(df.assign(one=a[:,0], two=a[:,1])   # one and two can be changed
   .drop_duplicates(['one','two'])   # taken from above
   .reindex(df.columns, axis=1)
)
7

One way is using np.unique with return_index=True and use the result to index the dataframe:

a = np.sort(df.values)
_, ix = np.unique(a, return_index=True, axis=0)

print(df.iloc[ix, :])

    c1  c2
0    0   0
1    0   1
20   2   0
3    0   3
40   4   0
50   5   0
6    0   6
70   7   0
8    0   8
9    0   9
11   1   1
21   2   1
13   1   3
41   4   1
51   5   1
16   1   6
71   7   1
...
  • 1
    Yes otherwise unique fails to detect symmetric pairs @DanielMesejo – yatu Oct 28 at 14:56
  • Ok, I see so you are sorting the pairs – Daniel Mesejo Oct 28 at 14:57
  • Yes but i mean you transform [1, 0] into [0, 1] right? – Daniel Mesejo Oct 28 at 14:58
5

frozenset

mask = pd.Series(map(frozenset, zip(df.c1, df.c2))).duplicated()

df[~mask]
  • 1
    Aren't you iterating slowly over tuples over each column here? Still, upvote. – The Unfun Cat Oct 28 at 14:31
  • Yes, I'm iterating. No, it isn't as slow as you think. – piRSquared Oct 28 at 14:32
5

I will do

df[~pd.DataFrame(np.sort(df.values,1)).duplicated().values]

From pandas and numpy tri

s=pd.crosstab(df.c1,df.c2)
s=s.mask(np.triu(np.ones(s.shape)).astype(np.bool) & s==0).stack().reset_index()
4

Here's one NumPy based one for integers -

def remove_symm_pairs(df):
    a = df.to_numpy(copy=False)
    b = np.sort(a,axis=1)
    idx = np.ravel_multi_index(b.T,(b.max(0)+1))
    sidx = idx.argsort(kind='mergesort')
    p = idx[sidx]
    m = np.r_[True,p[:-1]!=p[1:]]
    a_out = a[np.sort(sidx[m])]
    df_out = pd.DataFrame(a_out)
    return df_out

If you want to keep the index data as it is, use return df.iloc[np.sort(sidx[m])].

For generic numbers (ints/floats, etc.), we will use a view-based one -

# https://stackoverflow.com/a/44999009/ @Divakar
def view1D(a): # a is array
    a = np.ascontiguousarray(a)
    void_dt = np.dtype((np.void, a.dtype.itemsize * a.shape[1]))
    return a.view(void_dt).ravel()

and simply replace the step to get idx with idx = view1D(b) in remove_symm_pairs.

1

If this needs to be fast, and if your variables are integer, then the following trick may help: let v,w be the columns of your vector; construct [v+w, np.abs(v-w)] =: [x, y]; then sort this matrix lexicographically, remove duplicates, and finally map it back to [v, w] = [(x+y), (x-y)]/2.

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