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    Pandas高级教程之Pandas中的GroupBy操作

    作者:flydean程序那些事 时间:2021-08-04 18:01

    目录
    • 简介
    • 分割数据
      • 多index
      • get_group
      • dropna
      • groups属性
      • index的层级
    • group的遍历
      • 聚合操作
        • 通用聚合方法
        • 可以同时指定多个聚合方法:
        • NamedAgg
        • 不同的列指定不同的聚合方法
      • 转换操作
        • 过滤操作
          • Apply操作

            简介

            pandas中的DF数据类型可以像数据库表格一样进行groupby操作。通常来说groupby操作可以分为三部分:分割数据,应用变换和和合并数据。

            本文将会详细讲解Pandas中的groupby操作。

            分割数据

            分割数据的目的是将DF分割成为一个个的group。为了进行groupby操作,在创建DF的时候需要指定相应的label:

            df = pd.DataFrame(
               ...:     {
               ...:         "A": ["foo", "bar", "foo", "bar", "foo", "bar", "foo", "foo"],
               ...:         "B": ["one", "one", "two", "three", "two", "two", "one", "three"],
               ...:         "C": np.random.randn(8),
               ...:         "D": np.random.randn(8),
               ...:     }
               ...: )
               ...:
            
            df
            Out[61]: 
                 A      B         C         D
            0  foo    one -0.490565 -0.233106
            1  bar    one  0.430089  1.040789
            2  foo    two  0.653449 -1.155530
            3  bar  three -0.610380 -0.447735
            4  foo    two -0.934961  0.256358
            5  bar    two -0.256263 -0.661954
            6  foo    one -1.132186 -0.304330
            7  foo  three  2.129757  0.445744

            默认情况下,groupby的轴是x轴。可以一列group,也可以多列group:

            In [8]: grouped = df.groupby("A")
            
            In [9]: grouped = df.groupby(["A", "B"])

            多index

            0.24版本中,如果我们有多index,可以从中选择特定的index进行group:

            In [10]: df2 = df.set_index(["A", "B"])
            
            In [11]: grouped = df2.groupby(level=df2.index.names.difference(["B"]))
            
            In [12]: grouped.sum()
            Out[12]: 
                        C         D
            A                      
            bar -1.591710 -1.739537
            foo -0.752861 -1.402938

            get_group

            get_group 可以获取分组之后的数据:

            In [24]: df3 = pd.DataFrame({"X": ["A", "B", "A", "B"], "Y": [1, 4, 3, 2]})
            
            In [25]: df3.groupby(["X"]).get_group("A")
            Out[25]: 
               X  Y
            0  A  1
            2  A  3
            
            In [26]: df3.groupby(["X"]).get_group("B")
            Out[26]: 
               X  Y
            1  B  4
            3  B  2

            dropna

            默认情况下,NaN数据会被排除在groupby之外,通过设置 dropna=False 可以允许NaN数据:

            In [27]: df_list = [[1, 2, 3], [1, None, 4], [2, 1, 3], [1, 2, 2]]
            
            In [28]: df_dropna = pd.DataFrame(df_list, columns=["a", "b", "c"])
            
            In [29]: df_dropna
            Out[29]: 
               a    b  c
            0  1  2.0  3
            1  1  NaN  4
            2  2  1.0  3
            3  1  2.0  2
            # Default ``dropna`` is set to True, which will exclude NaNs in keys
            In [30]: df_dropna.groupby(by=["b"], dropna=True).sum()
            Out[30]: 
                 a  c
            b        
            1.0  2  3
            2.0  2  5
            
            # In order to allow NaN in keys, set ``dropna`` to False
            In [31]: df_dropna.groupby(by=["b"], dropna=False).sum()
            Out[31]: 
                 a  c
            b        
            1.0  2  3
            2.0  2  5
            NaN  1  4

            groups属性

            groupby对象有个groups属性,它是一个key-value字典,key是用来分类的数据,value是分类对应的值。

            In [34]: grouped = df.groupby(["A", "B"])
            
            In [35]: grouped.groups
            Out[35]: {('bar', 'one'): [1], ('bar', 'three'): [3], ('bar', 'two'): [5], ('foo', 'one'): [0, 6], ('foo', 'three'): [7], ('foo', 'two'): [2, 4]}
            
            In [36]: len(grouped)
            Out[36]: 6

            index的层级

            对于多级index对象,groupby可以指定group的index层级:

            In [40]: arrays = [
               ....:     ["bar", "bar", "baz", "baz", "foo", "foo", "qux", "qux"],
               ....:     ["one", "two", "one", "two", "one", "two", "one", "two"],
               ....: ]
               ....: 
            
            In [41]: index = pd.MultiIndex.from_arrays(arrays, names=["first", "second"])
            
            In [42]: s = pd.Series(np.random.randn(8), index=index)
            
            In [43]: s
            Out[43]: 
            first  second
            bar    one      -0.919854
                   two      -0.042379
            baz    one       1.247642
                   two      -0.009920
            foo    one       0.290213
                   two       0.495767
            qux    one       0.362949
                   two       1.548106
            dtype: float64

            group第一级:

            In [44]: grouped = s.groupby(level=0)
            
            In [45]: grouped.sum()
            Out[45]: 
            first
            bar   -0.962232
            baz    1.237723
            foo    0.785980
            qux    1.911055
            dtype: float64

            group第二级:

            In [46]: s.groupby(level="second").sum()
            Out[46]: 
            second
            one    0.980950
            two    1.991575
            dtype: float64

            group的遍历

            得到group对象之后,我们可以通过for语句来遍历group:

            In [62]: grouped = df.groupby('A')
            
            In [63]: for name, group in grouped:
               ....:     print(name)
               ....:     print(group)
               ....: 
            bar
                 A      B         C         D
            1  bar    one  0.254161  1.511763
            3  bar  three  0.215897 -0.990582
            5  bar    two -0.077118  1.211526
            foo
                 A      B         C         D
            0  foo    one -0.575247  1.346061
            2  foo    two -1.143704  1.627081
            4  foo    two  1.193555 -0.441652
            6  foo    one -0.408530  0.268520
            7  foo  three -0.862495  0.024580

            如果是多字段group,group的名字是一个元组:

            In [64]: for name, group in df.groupby(['A', 'B']):
               ....:     print(name)
               ....:     print(group)
               ....: 
            ('bar', 'one')
                 A    B         C         D
            1  bar  one  0.254161  1.511763
            ('bar', 'three')
                 A      B         C         D
            3  bar  three  0.215897 -0.990582
            ('bar', 'two')
                 A    B         C         D
            5  bar  two -0.077118  1.211526
            ('foo', 'one')
                 A    B         C         D
            0  foo  one -0.575247  1.346061
            6  foo  one -0.408530  0.268520
            ('foo', 'three')
                 A      B         C        D
            7  foo  three -0.862495  0.02458
            ('foo', 'two')
                 A    B         C         D
            2  foo  two -1.143704  1.627081
            4  foo  two  1.193555 -0.441652

            聚合操作

            分组之后,就可以进行聚合操作:

            In [67]: grouped = df.groupby("A")
            
            In [68]: grouped.aggregate(np.sum)
            Out[68]: 
                        C         D
            A                      
            bar  0.392940  1.732707
            foo -1.796421  2.824590
            
            In [69]: grouped = df.groupby(["A", "B"])
            
            In [70]: grouped.aggregate(np.sum)
            Out[70]: 
                              C         D
            A   B                        
            bar one    0.254161  1.511763
                three  0.215897 -0.990582
                two   -0.077118  1.211526
            foo one   -0.983776  1.614581
                three -0.862495  0.024580
                two    0.049851  1.185429

            对于多index数据来说,默认返回值也是多index的。如果想使用新的index,可以添加 as_index = False:

            In [71]: grouped = df.groupby(["A", "B"], as_index=False)
            
            In [72]: grouped.aggregate(np.sum)
            Out[72]: 
                 A      B         C         D
            0  bar    one  0.254161  1.511763
            1  bar  three  0.215897 -0.990582
            2  bar    two -0.077118  1.211526
            3  foo    one -0.983776  1.614581
            4  foo  three -0.862495  0.024580
            5  foo    two  0.049851  1.185429
            
            In [73]: df.groupby("A", as_index=False).sum()
            Out[73]: 
                 A         C         D
            0  bar  0.392940  1.732707
            1  foo -1.796421  2.824590

            上面的效果等同于reset_index

            In [74]: df.groupby(["A", "B"]).sum().reset_index()

            grouped.size() 计算group的大小:

            In [75]: grouped.size()
            Out[75]: 
                 A      B  size
            0  bar    one     1
            1  bar  three     1
            2  bar    two     1
            3  foo    one     2
            4  foo  three     1
            5  foo    two     2

            grouped.describe() 描述group的信息:

            In [76]: grouped.describe()
            Out[76]: 
                  C                                                    ...         D                                                  
              count      mean       std       min       25%       50%  ...       std       min       25%       50%       75%       max
            0   1.0  0.254161       NaN  0.254161  0.254161  0.254161  ...       NaN  1.511763  1.511763  1.511763  1.511763  1.511763
            1   1.0  0.215897       NaN  0.215897  0.215897  0.215897  ...       NaN -0.990582 -0.990582 -0.990582 -0.990582 -0.990582
            2   1.0 -0.077118       NaN -0.077118 -0.077118 -0.077118  ...       NaN  1.211526  1.211526  1.211526  1.211526  1.211526
            3   2.0 -0.491888  0.117887 -0.575247 -0.533567 -0.491888  ...  0.761937  0.268520  0.537905  0.807291  1.076676  1.346061
            4   1.0 -0.862495       NaN -0.862495 -0.862495 -0.862495  ...       NaN  0.024580  0.024580  0.024580  0.024580  0.024580
            5   2.0  0.024925  1.652692 -1.143704 -0.559389  0.024925  ...  1.462816 -0.441652  0.075531  0.592714  1.109898  1.627081
            
            [6 rows x 16 columns]

            通用聚合方法

            下面是通用的聚合方法:

            函数 描述
            mean() 平均值
            sum() 求和
            size() 计算size
            count() group的统计
            std() 标准差
            var() 方差
            sem() 均值的标准误
            describe() 统计信息描述
            first() 第一个group值
            last() 最后一个group值
            nth() 第n个group值
            min() 最小值
            max() 最大值

            可以同时指定多个聚合方法:

            In [81]: grouped = df.groupby("A")
            
            In [82]: grouped["C"].agg([np.sum, np.mean, np.std])
            Out[82]: 
                      sum      mean       std
            A                                
            bar  0.392940  0.130980  0.181231
            foo -1.796421 -0.359284  0.912265

            可以重命名:

            In [84]: (
               ....:     grouped["C"]
               ....:     .agg([np.sum, np.mean, np.std])
               ....:     .rename(columns={"sum": "foo", "mean": "bar", "std": "baz"})
               ....: )
               ....: 
            Out[84]: 
                      foo       bar       baz
            A                                
            bar  0.392940  0.130980  0.181231
            foo -1.796421 -0.359284  0.912265

            NamedAgg

            NamedAgg 可以对聚合进行更精准的定义,它包含 column 和aggfunc 两个定制化的字段。

            In [88]: animals = pd.DataFrame(
               ....:     {
               ....:         "kind": ["cat", "dog", "cat", "dog"],
               ....:         "height": [9.1, 6.0, 9.5, 34.0],
               ....:         "weight": [7.9, 7.5, 9.9, 198.0],
               ....:     }
               ....: )
               ....: 
            
            In [89]: animals
            Out[89]: 
              kind  height  weight
            0  cat     9.1     7.9
            1  dog     6.0     7.5
            2  cat     9.5     9.9
            3  dog    34.0   198.0
            
            In [90]: animals.groupby("kind").agg(
               ....:     min_height=pd.NamedAgg(column="height", aggfunc="min"),
               ....:     max_height=pd.NamedAgg(column="height", aggfunc="max"),
               ....:     average_weight=pd.NamedAgg(column="weight", aggfunc=np.mean),
               ....: )
               ....: 
            Out[90]: 
                  min_height  max_height  average_weight
            kind                                        
            cat          9.1         9.5            8.90
            dog          6.0        34.0          102.75

            或者直接使用一个元组:

            In [91]: animals.groupby("kind").agg(
               ....:     min_height=("height", "min"),
               ....:     max_height=("height", "max"),
               ....:     average_weight=("weight", np.mean),
               ....: )
               ....: 
            Out[91]: 
                  min_height  max_height  average_weight
            kind                                        
            cat          9.1         9.5            8.90
            dog          6.0        34.0          102.75

            不同的列指定不同的聚合方法

            通过给agg方法传入一个字典,可以指定不同的列使用不同的聚合:

            In [95]: grouped.agg({"C": "sum", "D": "std"})
            Out[95]: 
                        C         D
            A                      
            bar  0.392940  1.366330
            foo -1.796421  0.884785

            转换操作

            转换是将对象转换为同样大小对象的操作。在数据分析的过程中,经常需要进行数据的转换操作。

            可以接lambda操作:

            In [112]: ts.groupby(lambda x: x.year).transform(lambda x: x.max() - x.min())

            填充na值:

            In [121]: transformed = grouped.transform(lambda x: x.fillna(x.mean()))

            过滤操作

            filter方法可以通过lambda表达式来过滤我们不需要的数据:

            In [136]: sf = pd.Series([1, 1, 2, 3, 3, 3])
            
            In [137]: sf.groupby(sf).filter(lambda x: x.sum() > 2)
            Out[137]: 
            3    3
            4    3
            5    3
            dtype: int64

            Apply操作

            有些数据可能不适合进行聚合或者转换操作,Pandas提供了一个 apply 方法,用来进行更加灵活的转换操作。

            In [156]: df
            Out[156]: 
                 A      B         C         D
            0  foo    one -0.575247  1.346061
            1  bar    one  0.254161  1.511763
            2  foo    two -1.143704  1.627081
            3  bar  three  0.215897 -0.990582
            4  foo    two  1.193555 -0.441652
            5  bar    two -0.077118  1.211526
            6  foo    one -0.408530  0.268520
            7  foo  three -0.862495  0.024580
            
            In [157]: grouped = df.groupby("A")
            
            # could also just call .describe()
            In [158]: grouped["C"].apply(lambda x: x.describe())
            Out[158]: 
            A         
            bar  count    3.000000
                 mean     0.130980
                 std      0.181231
                 min     -0.077118
                 25%      0.069390
                            ...   
            foo  min     -1.143704
                 25%     -0.862495
                 50%     -0.575247
                 75%     -0.408530
                 max      1.193555
            Name: C, Length: 16, dtype: float64

            可以外接函数:

            In [159]: grouped = df.groupby('A')['C']
            
            In [160]: def f(group):
               .....:     return pd.DataFrame({'original': group,
               .....:                          'demeaned': group - group.mean()})
               .....: 
            
            In [161]: grouped.apply(f)
            Out[161]: 
               original  demeaned
            0 -0.575247 -0.215962
            1  0.254161  0.123181
            2 -1.143704 -0.784420
            3  0.215897  0.084917
            4  1.193555  1.552839
            5 -0.077118 -0.208098
            6 -0.408530 -0.049245
            7 -0.862495 -0.503211

            本文已收录于 http://www.flydean.com/11-python-pandas-groupby/

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