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  • Pandas分组运算(groupby)修炼

    Pandas分组运算(groupby)修炼

    Pandas的groupby()功能很强大,用好了可以方便的解决很多问题,在数据处理以及日常工作中经常能施展拳脚。

    今天,我们一起来领略下groupby()的魅力吧。

    首先,引入相关package:

    import pandas as pd
    import numpy as np
    

    groupby的基础操作

    In [2]: df = pd.DataFrame({'A': ['a', 'b', 'a', 'c', 'a', 'c', 'b', 'c'], 
       ...:                    'B': [2, 8, 1, 4, 3, 2, 5, 9], 
       ...:                    'C': [102, 98, 107, 104, 115, 87, 92, 123]})
       ...: df
       ...: 
    
    Out[2]: 
       A  B    C
    0  a  2  102
    1  b  8   98
    2  a  1  107
    3  c  4  104
    4  a  3  115
    5  c  2   87
    6  b  5   92
    7  c  9  123
    

    按A列分组(groupby),获取其他列的均值

    df.groupby('A').mean()
    
    Out[3]: 
         B           C
    A                 
    a  2.0  108.000000
    b  6.5   95.000000
    c  5.0  104.666667
    

    按多列进行分组(groupby)

    df.groupby(['A','B']).mean()
    
    Out[4]: 
           C
    A B     
    a 1  107
      2  102
      3  115
    b 5   92
      8   98
    c 2   87
      4  104
      9  123
    

    分组后选择列进行运算

    分组后,可以选取单列数据,或者多个列组成的列表(list)进行运算

    In [5]: df = pd.DataFrame([[1, 1, 2], [1, 2, 3], [2, 3, 4]], columns=["A", "B", "C"])
       ...: df
       ...: 
    Out[5]: 
       A  B  C
    0  1  1  2
    1  1  2  3
    2  2  3  4
    
    In [6]: g = df.groupby("A")
    
    In [7]: g['B'].mean() # 仅选择B列
    
    Out[7]: 
    A
    1    1.5
    2    3.0
    Name: B, dtype: float64
    
    In [8]: g[['B', 'C']].mean() # 选择B、C列
    
    Out[8]: 
         B    C
    A          
    1  1.5  2.5
    2  3.0  4.0
    

    可以针对不同的列选用不同的聚合方法

    In [9]: g.agg({'B':'mean', 'C':'sum'})
    
    Out[9]: 
         B  C
    A        
    1  1.5  5
    2  3.0  4
    

    聚合方法size()和count()

    size跟count的区别: size计数时包含NaN值,而count不包含NaN值

    In [10]: df = pd.DataFrame({"Name":["Alice", "Bob", "Mallory", "Mallory", "Bob" , "Mallory"],
        ...:                  "City":["Seattle", "Seattle", "Portland", "Seattle", "Seattle", "Portland"],
        ...:                  "Val":[4,3,3,np.nan,np.nan,4]})
        ...: 
        ...: df
        ...: 
    Out[10]: 
           City     Name  Val
    0   Seattle    Alice  4.0
    1   Seattle      Bob  3.0
    2  Portland  Mallory  3.0
    3   Seattle  Mallory  NaN
    4   Seattle      Bob  NaN
    5  Portland  Mallory  4.0
    

    count()

    In [11]: df.groupby(["Name", "City"], as_index=False)['Val'].count()
    
    Out[11]: 
          Name      City  Val
    0    Alice   Seattle    1
    1      Bob   Seattle    1
    2  Mallory  Portland    2
    3  Mallory   Seattle    0
    

    size()

    In [12]: df.groupby(["Name", "City"])['Val'].size().reset_index(name='Size')
    
    Out[12]: 
          Name      City  Size
    0    Alice   Seattle     1
    1      Bob   Seattle     2
    2  Mallory  Portland     2
    3  Mallory   Seattle     1
    

    分组运算方法 agg()

    针对某列使用agg()时进行不同的统计运算

    In [13]: df = pd.DataFrame({'A': list('XYZXYZXYZX'), 'B': [1, 2, 1, 3, 1, 2, 3, 3, 1, 2], 
        ...:                            'C': [12, 14, 11, 12, 13, 14, 16, 12, 10, 19]})
        ...: df
        ...: 
    Out[13]: 
       A  B   C
    0  X  1  12
    1  Y  2  14
    2  Z  1  11
    3  X  3  12
    4  Y  1  13
    5  Z  2  14
    6  X  3  16
    7  Y  3  12
    8  Z  1  10
    9  X  2  19
    
    In [14]: df.groupby('A')['B'].agg({'mean':np.mean, 'standard deviation': np.std})
    
    Out[14]: 
           mean  standard deviation
    A                              
    X  2.250000            0.957427
    Y  2.000000            1.000000
    Z  1.333333            0.577350
    

    针对不同的列应用多种不同的统计方法

    In [15]: df.groupby('A').agg({'B':[np.mean, 'sum'], 'C':['count',np.std]})
    
    Out[15]: 
              B         C          
           mean sum count       std
    A                              
    X  2.250000   9     4  3.403430
    Y  2.000000   6     3  1.000000
    Z  1.333333   4     3  2.081666
    

    分组运算方法 apply()

    In [16]: df = pd.DataFrame({'A': list('XYZXYZXYZX'), 'B': [1, 2, 1, 3, 1, 2, 3, 3, 1, 2], 
        ...:                            'C': [12, 14, 11, 12, 13, 14, 16, 12, 10, 19]})
        ...: df
        ...: 
    Out[16]: 
       A  B   C
    0  X  1  12
    1  Y  2  14
    2  Z  1  11
    3  X  3  12
    4  Y  1  13
    5  Z  2  14
    6  X  3  16
    7  Y  3  12
    8  Z  1  10
    9  X  2  19
    
    In [17]: df.groupby('A').apply(np.mean) 
        ...: # 跟下面的方法的运行结果是一致的
        ...: # df.groupby('A').mean()
    Out[17]: 
              B          C
    A                     
    X  2.250000  14.750000
    Y  2.000000  13.000000
    Z  1.333333  11.666667
    

    apply()方法可以应用lambda函数,举例如下:

    In [18]: df.groupby('A').apply(lambda x: x['C']-x['B'])
    Out[18]: 
    A   
    X  0    11
       3     9
       6    13
       9    17
    Y  1    12
       4    12
       7     9
    Z  2    10
       5    12
       8     9
    dtype: int64
    
    In [19]: df.groupby('A').apply(lambda x: (x['C']-x['B']).mean())
    Out[19]: 
    A
    X    12.500000
    Y    11.000000
    Z    10.333333
    dtype: float64
    

    分组运算方法 transform()

    前面进行聚合运算的时候,得到的结果是一个以分组名为 index 的结果对象。如果我们想使用原数组的 index 的话,就需要进行 merge 转换。transform(func, args, *kwargs) 方法简化了这个过程,它会把 func 参数应用到所有分组,然后把结果放置到原数组的 index 上(如果结果是一个标量,就进行广播):

    In [20]: df = pd.DataFrame({'group1' :  ['A', 'A', 'A', 'A',
        ...:                                'B', 'B', 'B', 'B'],
        ...:                    'group2' :  ['C', 'C', 'C', 'D',
        ...:                                'E', 'E', 'F', 'F'],
        ...:                    'B'      :  ['one', np.NaN, np.NaN, np.NaN,
        ...:                                 np.NaN, 'two', np.NaN, np.NaN],
        ...:                    'C'      :  [np.NaN, 1, np.NaN, np.NaN,
        ...:                                np.NaN, np.NaN, np.NaN, 4]})           
        ...: df
        ...: 
    Out[20]: 
         B    C group1 group2
    0  one  NaN      A      C
    1  NaN  1.0      A      C
    2  NaN  NaN      A      C
    3  NaN  NaN      A      D
    4  NaN  NaN      B      E
    5  two  NaN      B      E
    6  NaN  NaN      B      F
    7  NaN  4.0      B      F
    
    In [21]: df.groupby(['group1', 'group2'])['B'].transform('count')
    Out[21]: 
    0    1
    1    1
    2    1
    3    0
    4    1
    5    1
    6    0
    7    0
    Name: B, dtype: int64
    
    In [22]: df['count_B']=df.groupby(['group1', 'group2'])['B'].transform('count')
        ...: df
        ...: 
    Out[22]: 
         B    C group1 group2  count_B
    0  one  NaN      A      C        1
    1  NaN  1.0      A      C        1
    2  NaN  NaN      A      C        1
    3  NaN  NaN      A      D        0
    4  NaN  NaN      B      E        1
    5  two  NaN      B      E        1
    6  NaN  NaN      B      F        0
    7  NaN  4.0      B      F        0
    

    上面运算的结果分析: {‘group1’:’A’, ‘group2’:’C’}的组合共出现3次,即index为0,1,2。对应”B”列的值分别是”one”,”NaN”,”NaN”,由于count()计数时不包括Nan值,因此{‘group1’:’A’, ‘group2’:’C’}的count计数值为1。
    transform()方法会将该计数值在dataframe中所有涉及的rows都显示出来(我理解应该就进行广播)

    将某列数据按数据值分成不同范围段进行分组(groupby)运算

    In [23]: np.random.seed(0)
        ...: df = pd.DataFrame({'Age': np.random.randint(20, 70, 100), 
        ...:                    'Sex': np.random.choice(['Male', 'Female'], 100), 
        ...:                    'number_of_foo': np.random.randint(1, 20, 100)})
        ...: df.head()
        ...: 
    Out[23]: 
       Age     Sex  number_of_foo
    0   64  Female             14
    1   67  Female             14
    2   20  Female             12
    3   23    Male             17
    4   23  Female             15
    

    这里将“Age”列分成三类,有两种方法可以实现:

    (a)bins=4

    (b)bins=[19, 40, 65, np.inf]

    In [24]: pd.cut(df['Age'], bins=4)
    Out[24]: 
    ...
    
    In [25]: pd.cut(df['Age'], bins=[19,40,65,np.inf])
    

    分组结果范围结果如下:

    In [26]: age_groups = pd.cut(df['Age'], bins=[19,40,65,np.inf])
        ...: df.groupby(age_groups).mean()
    

    运行结果如下:

    按‘Age’分组范围和性别(sex)进行制作交叉表

    In [27]: pd.crosstab(age_groups, df['Sex'])
    

    运行结果如下:

    参考文章:http://stackoverflow.com/documentation/pandas/1822/grouping-data#t=201705040520188108539

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  • 原文地址:https://www.cnblogs.com/lemonbit/p/6810972.html
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