Pandas教程

Pandas GroupBy

Pandas GroupBy的操作实例
任何groupby操作都会对原始对象进行以下操作:
拆分对象 应用函数 合并结果
在许多情况下,我们将数据分成几组,然后在每个子集上应用一些功能。在Apply功能中,我们可以执行以下操作-
聚合 − 计算汇总统计 转换 − 分组操作 过滤 − 在某些条件下过滤数据
现在我们创建一个DataFrame对象并对其执行所有操作。
#import the pandas library
import pandas as pd
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
print(df)
运行结果如下:
    Points   Rank     Team   Year
0      876      1   Riders   2014
1      789      2   Riders   2015
2      863      2   Devils   2014
3      673      3   Devils   2015
4      741      3    Kings   2014
5      812      4    kings   2015
6      756      1    Kings   2016
7      788      1    Kings   2017
8      694      2   Riders   2016
9      701      4   Royals   2014
10     804      1   Royals   2015
11     690      2   Riders   2017

将数据分成组

象可以拆分为任何对象。有多种分割对象的方法,例如:
obj.groupby('key') obj.groupby(['key1','key2']) obj.groupby(key,axis=1)
现在我们看看如何将分组对象应用于DataFrame对象

实例

# import the pandas library
import pandas as pd
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
print(df.groupby('Team'))
运行结果如下:

查看组

# import the pandas library
import pandas as pd
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
print(df.groupby('Team').groups)
运行结果如下:
{'Kings': Int64Index([4, 6, 7], dtype='int64'),
'Devils': Int64Index([2, 3], dtype='int64'),
'Riders': Int64Index([0, 1, 8, 11], dtype='int64'),
'Royals': Int64Index([9, 10], dtype='int64'),
'kings' : Int64Index([5], dtype='int64')}

实例

用多列分组
# import the pandas library
import pandas as pd
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
print(df.groupby(['Team','Year']).groups)
运行结果如下:
{('Kings', 2014): Int64Index([4], dtype='int64'),
 ('Royals', 2014): Int64Index([9], dtype='int64'),
 ('Riders', 2014): Int64Index([0], dtype='int64'),
 ('Riders', 2015): Int64Index([1], dtype='int64'),
 ('Kings', 2016): Int64Index([6], dtype='int64'),
 ('Riders', 2016): Int64Index([8], dtype='int64'),
 ('Riders', 2017): Int64Index([11], dtype='int64'),
 ('Devils', 2014): Int64Index([2], dtype='int64'),
 ('Devils', 2015): Int64Index([3], dtype='int64'),
 ('kings', 2015): Int64Index([5], dtype='int64'),
 ('Royals', 2015): Int64Index([10], dtype='int64'),
 ('Kings', 2017): Int64Index([7], dtype='int64')}

遍历组

有了groupby对象,我们可以类似于itertools.obj遍历该对象。
# import the pandas library
import pandas as pd
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
grouped = df.groupby('Year')
for name,group in grouped:
   print(name)
   print(group)
运行结果如下:
2014
   Points  Rank     Team   Year
0     876     1   Riders   2014
2     863     2   Devils   2014
4     741     3   Kings    2014
9     701     4   Royals   2014

2015
   Points  Rank     Team   Year
1     789     2   Riders   2015
3     673     3   Devils   2015
5     812     4    kings   2015
10    804     1   Royals   2015

2016
   Points  Rank     Team   Year
6     756     1    Kings   2016
8     694     2   Riders   2016

2017
   Points  Rank    Team   Year
7     788     1   Kings   2017
11    690     2  Riders   2017
默认情况下,groupby对象的标签名称与组名称相同。

选择组p

使用get_group()方法,我们可以选择一个组。
# import the pandas library
import pandas as pd
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
grouped = df.groupby('Year')
print(grouped.get_group(2014))
运行结果如下:
   Points  Rank     Team    Year
0     876     1   Riders    2014
2     863     2   Devils    2014
4     741     3   Kings     2014
9     701     4   Royals    2014

集合体

聚合函数为每个组返回一个聚合值。一旦通过组对象被创建,几个聚合操作可以在分组的数据来执行。
一个明显的方法是通过合计或等效的agg方法进行合计。
# import the pandas library
import pandas as pd
import numpy as np
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
grouped = df.groupby('Year')
print(grouped['Points'].agg(np.mean))
运行结果如下:
Year
2014   795.25
2015   769.50
2016   725.00
2017   739.00
Name: Points, dtype: float64
查看每个组的大小的另一种方法是通过应用size()函数。
import pandas as pd
import numpy as np
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
Attribute Access in Python Pandas
grouped = df.groupby('Team')
print(grouped.agg(np.size))
运行结果如下:
         Points   Rank   Year
Team
Devils        2      2      2
Kings         3      3      3
Riders        4      4      4
Royals        2      2      2
kings         1      1      1

一次应用多个聚合功能

借助分组的Series,您还可以传递函数的列表或字典来进行聚合,并生成DataFrame作为输出-
# import the pandas library
import pandas as pd
import numpy as np
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
grouped = df.groupby('Team')
print(grouped['Points'].agg([np.sum, np.mean, np.std]))
运行结果如下:
Team      sum      mean          std
Devils   1536   768.000000   134.350288
Kings    2285   761.666667    24.006943
Riders   3049   762.250000    88.567771
Royals   1505   752.500000    72.831998
kings     812   812.000000          NaN

转换

在组或列上进行转换将返回一个索引,该索引的大小与正在分组的对象的大小相同。因此,转换应返回与组块大小相同的结果。
# import the pandas library
import pandas as pd
import numpy as np
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
grouped = df.groupby('Team')
score = lambda x: (x - x.mean()) / x.std()*10
print(grouped.transform(score))
运行结果如下:
       Points        Rank        Year
0   12.843272  -15.000000  -11.618950
1   3.020286     5.000000   -3.872983
2   7.071068    -7.071068   -7.071068
3  -7.071068     7.071068    7.071068
4  -8.608621    11.547005  -10.910895
5        NaN          NaN         NaN
6  -2.360428    -5.773503    2.182179
7  10.969049    -5.773503    8.728716
8  -7.705963     5.000000    3.872983
9  -7.071068     7.071068   -7.071068
10  7.071068    -7.071068    7.071068
11 -8.157595     5.000000   11.618950

过滤

过滤根据定义的条件过滤数据并返回数据的子集。所述过滤器()函数是用来筛选数据。
import pandas as pd
import numpy as np
ipl_data = {'Team': ['Riders', 'Riders', 'Devils', 'Devils', 'Kings',
   'kings', 'Kings', 'Kings', 'Riders', 'Royals', 'Royals', 'Riders'],
   'Rank': [1, 2, 2, 3, 3,4 ,1 ,1,2 , 4,1,2],
   'Year': [2014,2015,2014,2015,2014,2015,2016,2017,2016,2014,2015,2017],
   'Points':[876,789,863,673,741,812,756,788,694,701,804,690]}
df = pd.DataFrame(ipl_data)
print(df.groupby('Team').filter(lambda x: len(x) >= 3))
运行结果如下:
    Points  Rank     Team   Year
0      876     1   Riders   2014
1      789     2   Riders   2015
4      741     3   Kings    2014
6      756     1   Kings    2016
7      788     1   Kings    2017
8      694     2   Riders   2016
11     690     2   Riders   2017
昵称: 邮箱:
Copyright © 2022 立地货 All Rights Reserved.
备案号:京ICP备14037608号-4