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Using Pandas data frame group by feature and I want to group by column c_b and calculate unique count for column c_a and column c_c. My expected results are,

Expected results,

c_b,c_a_unique_count,c_c_unique_count
python,2,2
c++,2,2

Met with strange error about unhashable type, does anyone have any ideas? Thanks.

Input file,

c_a,c_b,c_c,c_d
hello,python,numpy,0.0
hi,python,pandas,1.0
ho,c++,vector,0.0
ho,c++,std,1.0
go,c++,std,0.0

Source code,

sample = pd.read_csv('123.csv', header=None, skiprows=1,
    dtype={0:str, 1:str, 2:str, 3:float})
sample.columns = pd.Index(data=['c_a', 'c_b', 'c_c', 'c_d'])
sample['c_d'] = sample['c_d'].astype('int64')
sampleGroup = sample.groupby('c_b')
results = sampleGroup.count()[:,[0,2]]
results.to_csv(derivedFeatureFile, index= False)

Error message,

Traceback (most recent call last):
  File "/Users/foo/personal/featureExtraction/kaggleExercise.py", line 134, in <module>
    unitTest()
  File "/Users/foo/personal/featureExtraction/kaggleExercise.py", line 129, in unitTest
    results = sampleGroup.count()[:,[0,2]]
  File "/Users/foo/miniconda2/lib/python2.7/site-packages/pandas/core/frame.py", line 1997, in __getitem__
    return self._getitem_column(key)
  File "/Users/foo/miniconda2/lib/python2.7/site-packages/pandas/core/frame.py", line 2004, in _getitem_column
    return self._get_item_cache(key)
  File "/Users/foo/miniconda2/lib/python2.7/site-packages/pandas/core/generic.py", line 1348, in _get_item_cache
    res = cache.get(item)
TypeError: unhashable type
5
  • 1
    sampleGroup.count()[:,[0,2]] what are you trying to do here? Try changing it to sampleGroup.count().iloc[:,[0,2]] if you want to get the first and the third column (you can do that on the groupby object too). (df.groupby('a')[[0, 2]].count()) – ayhan Aug 27 '16 at 21:56
  • Thanks @ayhan, your method works, but it seems results only have column c_a and c_d, maybe I thought is wrong -- I think c_b is automatically included since it is the column which group by is on, c_a,c_d 3,3 2,2 – Lin Ma Aug 27 '16 at 22:02
  • 1
    Yes grouping column becomes the index. You can access those columns by label too. What is the expected output? – ayhan Aug 27 '16 at 22:08
  • @ayhan, I post my expected results on the beginning part of the post, and I expect to output the group column value itself (in my example, it is value of column c_b, and unique count for column c_a and c_c). If you have any solutions, it will be great. – Lin Ma Aug 27 '16 at 22:11
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    Sorry I missed that. I posted an answer, with an without taking c_b as index. – ayhan Aug 27 '16 at 22:25
1

For the number of unique elements in each group, you can use:

df.groupby('c_b')['c_a', 'c_d'].agg(pd.Series.nunique)

df.groupby('c_b')['c_a', 'c_d'].agg(pd.Series.nunique)
Out: 
        c_a  c_d
c_b             
c++       2    2
python    2    2

df.groupby('c_b', as_index=False)['c_a', 'c_d'].agg(pd.Series.nunique)
Out: 
      c_b  c_a  c_d
0     c++    2    2
1  python    2    2
6
  • Thanks ayhan, the differences between the last two example is whether there is an additional integer incremental column? – Lin Ma Aug 27 '16 at 22:59
  • Thanks ayhan for the help, mark your reply as answer. – Lin Ma Aug 27 '16 at 23:19
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    That's the index of the dataframe. In the first one, the index is c_b. – ayhan Aug 28 '16 at 7:52
  • Thanks ayhan, so in your first example, (1) c_b is not a column, it is an index, and in the 2nd example, c_b is a column, not an index -- and an integer column makes the index, correct? (2) Why there must be an index? – Lin Ma Aug 28 '16 at 20:25
  • 1
    That's correct. Index is a way to differentiate rows and makes accessing easier/faster. – ayhan Aug 28 '16 at 20:30

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