如何在不添加额外索引的情况下使用Pandas groupby apply()函数

12

我经常想通过将分组的DataFrame的多个列组合来创建一个新的DataFrame。 apply()函数允许我这样做,但它需要我创建一个不必要的索引:

 In [359]: df = pandas.DataFrame({'x': 3 * ['a'] + 2 * ['b'], 'y': np.random.normal(size=5), 'z': np.random.normal(size=5)})

 In [360]: df
 Out[360]: 
    x         y         z
 0  a  0.201980 -0.470388
 1  a  0.190846 -2.089032
 2  a -1.131010  0.227859
 3  b -0.263865 -1.906575
 4  b -1.335956 -0.722087

 In [361]: df.groupby('x').apply(lambda x: pandas.DataFrame({'r': (x.y + x.z).sum() / x.z.sum(), 's': (x.y + x.z ** 2).sum() / x.z.sum()}))
 ---------------------------------------------------------------------------
 ValueError                                Traceback (most recent call last)
 /home/emarkley/work/src/partner_analysis2/main.py in <module>()
 ----> 1 df.groupby('x').apply(lambda x: pandas.DataFrame({'r': (x.y + x.z).sum() / x.z.sum(), 's': (x.y + x.z ** 2).sum() / x.z.sum()}))

 /usr/local/lib/python3.2/site-packages/pandas-0.8.2.dev-py3.2-linux-x86_64.egg/pandas/core/groupby.py in apply(self, func, *args, **kwargs)
     267         applied : type depending on grouped object and function
     268         """
 --> 269         return self._python_apply_general(func, *args, **kwargs)
     270 
     271     def aggregate(self, func, *args, **kwargs):

 /usr/local/lib/python3.2/site-packages/pandas-0.8.2.dev-py3.2-linux-x86_64.egg/pandas/core/groupby.py in _python_apply_general(self, func, *args, **kwargs)
     417             group_axes = _get_axes(group)
     418 
 --> 419             res = func(group, *args, **kwargs)
     420 
     421             if not _is_indexed_like(res, group_axes):

 /home/emarkley/work/src/partner_analysis2/main.py in <lambda>(x)
 ----> 1 df.groupby('x').apply(lambda x: pandas.DataFrame({'r': (x.y + x.z).sum() / x.z.sum(), 's': (x.y + x.z ** 2).sum() / x.z.sum()}))

 /usr/local/lib/python3.2/site-packages/pandas-0.8.2.dev-py3.2-linux-x86_64.egg/pandas/core/frame.py in __init__(self, data, index, columns, dtype, copy)
     371             mgr = self._init_mgr(data, index, columns, dtype=dtype, copy=copy)
     372         elif isinstance(data, dict):
 --> 373             mgr = self._init_dict(data, index, columns, dtype=dtype)
     374         elif isinstance(data, ma.MaskedArray):
     375             mask = ma.getmaskarray(data)

 /usr/local/lib/python3.2/site-packages/pandas-0.8.2.dev-py3.2-linux-x86_64.egg/pandas/core/frame.py in _init_dict(self, data, index, columns, dtype)
     454         # figure out the index, if necessary
     455         if index is None:
 --> 456             index = extract_index(data)
     457         else:
     458             index = _ensure_index(index)

 /usr/local/lib/python3.2/site-packages/pandas-0.8.2.dev-py3.2-linux-x86_64.egg/pandas/core/frame.py in extract_index(data)
    4719 
    4720         if not indexes and not raw_lengths:
 -> 4721             raise ValueError('If use all scalar values, must pass index')
    4722 
    4723         if have_series or have_dicts:

 ValueError: If use all scalar values, must pass index

 In [362]: df.groupby('x').apply(lambda x: pandas.DataFrame({'r': (x.y + x.z).sum() / x.z.sum(), 's': (x.y + x.z ** 2).sum() / x.z.sum()}, index=[0]))
 Out[362]: 
             r         s
 x                      
 a 0  1.316605 -1.672293
 b 0  1.608606 -0.972593
有没有办法使用apply()或其他函数来获得相同的结果,而不需要额外的零索引?
1个回答

12

您正在每个组中生成聚合的r和s值,因此应该在此处使用 Series

In [26]: df.groupby('x').apply(lambda x: 
             Series({'r': (x.y + x.z).sum() / x.z.sum(), 
                     's': (x.y + x.z ** 2).sum() / x.z.sum()}))
Out[26]: 
           r           s
x                       
a  -0.338590   -0.916635
b  66.655533  102.566146

谢谢您的回复。我之前也不知道应该返回一个Series,曾经尝试过返回DataFrame。这个信息(应该返回Series)应该在官方文档中提到。 - JustAC0der

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