8
df = pd.DataFrame({'a':['x','x','x','x','x','y','y','y','y','y'],'b':['z','z','z','w','w','z','z','w','w','w'],'c':['c1','c2','c3','c1','c3','c1','c3','c1','c2','c3'],'d':range(1,11)})

   a  b   c   d
0  x  z  c1   1
1  x  z  c2   2
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
8  y  w  c2   9
9  y  w  c3  10

how can I keep only the rows that, for all combination of a and b, contain the same values in c? Or in other words, how to exclude rows with c values that are only present in some combinations of a and b?

For example, only c1 and c3 are present in all combinations of a and b ([x,z],[x,w],[y,z],[y,w]), so the output would be

   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10
5

Lets try groupby with nunique to count of unique elements per column c group:

s = df['a'] + ',' + df['b'] # combination of a, b
m = s.groupby(df['c']).transform('nunique').eq(s.nunique())

df[m]

   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10
  • add is not really safe, it would confuse ('aa', 'b') with ('a', 'ab') – Quang Hoang yesterday
  • @QuangHoang True. How about using an seperator like df['a'] + ',' + df['b'] – Shubham Sharma yesterday
  • That'll be sensitive to , inside the field. Better do with tuple. – Quang Hoang yesterday
  • @QuangHoang That's very edge case, I think in that case using more complex seperator should work fine as well. – Shubham Sharma yesterday
5

Here is one way. Get unique lists per group and then check common elements across all the returned arrays using reduce and np.intersect1d. Then filter the dataframe using series.isin and boolean indexing

from functools import reduce
out = df[df['c'].isin(reduce(np.intersect1d,df.groupby(['a','b'])['c'].unique()))]

Breakdown:

s = df.groupby(['a','b'])['c'].unique()
common_elements = reduce(np.intersect1d,s)
#Returns :-> array(['c1', 'c3'], dtype=object)

out = df[df['c'].isin(common_elements )]#.copy()

   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10
4

Let's try pivot the table, then drop NA, which means a value is missing in the combination:

all_data =(df.pivot(index=['a','b'], columns='c', values='c')
             .loc[:, lambda x: x.notna().all()]
             .columns)
df[df['c'].isin(all_data)]

Output:

   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10
  • 1
    @anky probably pivot does not allow same column and values. Use values='d' and aggfunc='size' with pivot_table instead. – Quang Hoang yesterday
4

We can use groupby + size and then unstack, which will fill NaN for groups of ['a', 'b'] that are missing a 'c' group. Then we dropna and subset the original DataFrame to the c values that survive the dropna.

df[df.c.isin(df.groupby(['a', 'b', 'c']).size().unstack(-1).dropna(axis=1).columns)]

   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10

The result of the groupby operation contains columns only for groups of c that exist in all unique combinations of ['a', 'b'], so we just grab the columns attribute.

df.groupby(['a', 'b', 'c']).size().unstack(-1).dropna(axis=1)

#c     c1   c3
#a b          
#x w  1.0  1.0
#  z  1.0  1.0
#y w  1.0  1.0
#  z  1.0  1.0
4

Try something diff crosstab

s = pd.crosstab([df['a'],df['b']],df.c).all()
out = df.loc[df.c.isin(s.index[s])]
Out[34]: 
   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10
2

You could use list comprehension with str.contains:

unq = [[x, len(df[(df[['a','b','c']].agg(','.join, axis=1)).str.contains(',' + x)]
                   .drop_duplicates())] for x in df['c'].unique()]
keep = [lst[0] for lst in unq if lst[1] == max([lst[1] for lst in unq])]
df = df[df['c'].isin(keep)]
df

   a  b   c   d
0  x  z  c1   1
2  x  z  c3   3
3  x  w  c1   4
4  x  w  c3   5
5  y  z  c1   6
6  y  z  c3   7
7  y  w  c1   8
9  y  w  c3  10
0

If you make the below assumptions this works to give you which elements of column c to keep:

df.groupby("c")["a"].count() == df.groupby("c")["a"].count().max()

Output:

c
c1     True
c2    False
c3     True
Name: a, dtype: bool

Assumptions:

  1. There are no duplicates
  2. There is at least one value for column c that contains all combinations of a and b.
0

Assuming there are 4 distinct values as per the example:

A simple solution can be :

df[df['a'].groupby(df['c']).transform('count').eq(4)]

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