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I have a pandas dataframe in python with columns 'a', 'b', 'c'. The 'a','b' pairs are unique and repeat multiple times. 'c' is changing all the time. I want to find the 10 pairs 'a','b' that appear the most and put them in a dataframe but don't know how. Any help is appreciated.

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1 Answer 1

up vote 2 down vote accepted

I'm not entirely sure I follow you, but assuming you mean you have a DataFrame looking something like

>>> N = 1000
>>> df = pd.DataFrame(np.random.randint(0, 10, (N, 3)), columns="A B C".split()) 
>>> df.head()
   A  B  C
0  7  4  5
1  5  1  3
2  8  9  8
3  2  3  0
4  2  3  0

and you simply want to count (A, B) pairs, that's easy enough:

>>> df.groupby(["A", "B"]).size().order().iloc[-10:]
A  B
6  1    13
1  0    14
4  0    14
7  2    14
1  6    15
8  2    15
1  8    16
2  6    16
6  4    16
7  4    16
dtype: int64

That can be broken down into four parts:

  1. groupby, which groups the data by (A, B) tuples
  2. size, which computes the size of each group
  3. order, which returns the Series sorted by value
  4. iloc, which lets us select the last 10 entries in the Series by position

That results in a Series, but you could make a DataFrame out of it simply by passing it to pd.DataFrame.

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