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Pandas之DataFrame——Part 3

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标签:.data   中位数   numpy   panda   []   series   style   port   .so   

‘‘‘
【课程2.14】  数值计算和统计基础

常用数学、统计方法
 
‘‘‘
# 基本参数:axis、skipna

import numpy as np
import pandas as pd

df = pd.DataFrame({key1:[4,5,3,np.nan,2],
                 key2:[1,2,np.nan,4,5],
                 key3:[1,2,3,j,k]},
                 index = [a,b,c,d,e])
print(df)
print(df[key1].dtype,df[key2].dtype,df[key3].dtype)
print(-----)

m1 = df.mean()
print(m1,type(m1))
print(单独统计一列:,df[key2].mean())
print(-----)
# np.nan :空值
# .mean()计算均值
# 只统计数字列
# 可以通过索引单独统计一列

m2 = df.mean(axis=1)
print(m2)
print(-----)
# axis参数:默认为0,以列来计算,axis=1,以行来计算,这里就按照行来汇总了

m3 = df.mean(skipna=False)
print(m3)
print(-----)
# skipna参数:是否忽略NaN,默认True,如False,有NaN的列统计结果仍未NaN

  输出:

   key1  key2 key3
a   4.0   1.0    1
b   5.0   2.0    2
c   3.0   NaN    3
d   NaN   4.0    j
e   2.0   5.0    k
float64 float64 object
-----
key1    3.5
key2    3.0
dtype: float64 <class pandas.core.series.Series>
单独统计一列: 3.0
-----
a    2.5
b    3.5
c    3.0
d    4.0
e    3.5
dtype: float64
-----
key1   NaN
key2   NaN
dtype: float64
-----

 

# 主要数学计算方法,可用于Series和DataFrame(1)

df = pd.DataFrame({key1:np.arange(10),
                  key2:np.random.rand(10)*10})
print(df)
print(-----)

print(df.count(),→ count统计非Na值的数量\n)
print(df.min(),→ min统计最小值\n,df[key2].max(),→ max统计最大值\n)
print(df.quantile(q=0.75),→ quantile统计分位数,参数q确定位置\n)
print(df.sum(),→ sum求和\n)
print(df.mean(),→ mean求平均值\n)
print(df.median(),→ median求算数中位数,50%分位数\n)
print(df.std(),\n,df.var(),→ std,var分别求标准差,方差\n)
print(df.skew(),→ skew样本的偏度\n)
print(df.kurt(),→ kurt样本的峰度\n)

  输出:

  key1      key2
0     0  4.667989
1     1  4.336625
2     2  0.746852
3     3  9.670919
4     4  8.732045
5     5  0.013751
6     6  8.963752
7     7  0.279303
8     8  8.586821
9     9  8.899657
-----
key1    10
key2    10
dtype: int64 → count统计非Na值的数量

key1    0.000000
key2    0.013751
dtype: float64 → min统计最小值
 9.67091932107 → max统计最大值

key1    6.750000
key2    8.857754
dtype: float64 → quantile统计分位数,参数q确定位置

key1    45.000000
key2    54.897714
dtype: float64 → sum求和

key1    4.500000
key2    5.489771
dtype: float64 → mean求平均值

key1    4.500000
key2    6.627405
dtype: float64 → median求算数中位数,50%分位数

key1    3.027650
key2    3.984945
dtype: float64 
 key1     9.166667
key2    15.879783
dtype: float64 → std,var分别求标准差,方差

key1    0.000000
key2   -0.430166
dtype: float64 → skew样本的偏度

key1   -1.200000
key2   -1.800296
dtype: float64 → kurt样本的峰度

 

# 主要数学计算方法,可用于Series和DataFrame(2)

df[key1_s] = df[key1].cumsum()
df[key2_s] = df[key2].cumsum()
print(df,→ cumsum样本的累计和\n)

df[key1_p] = df[key1].cumprod()
df[key2_p] = df[key2].cumprod()
print(df,→ cumprod样本的累计积\n)

print(df.cummax(),\n,df.cummin(),→ cummax,cummin分别求累计最大值,累计最小值\n)
# 会填充key1,和key2的值

  输出:

  key1      key2  key1_s     key2_s
0     0  4.667989       0   4.667989
1     1  4.336625       1   9.004614
2     2  0.746852       3   9.751466
3     3  9.670919       6  19.422386
4     4  8.732045      10  28.154431
5     5  0.013751      15  28.168182
6     6  8.963752      21  37.131934
7     7  0.279303      28  37.411236
8     8  8.586821      36  45.998057
9     9  8.899657      45  54.897714 → cumsum样本的累计和

   key1      key2  key1_s     key2_s  key1_p       key2_p
0     0  4.667989       0   4.667989       0     4.667989
1     1  4.336625       1   9.004614       0    20.243318
2     2  0.746852       3   9.751466       0    15.118767
3     3  9.670919       6  19.422386       0   146.212377
4     4  8.732045      10  28.154431       0  1276.733069
5     5  0.013751      15  28.168182       0    17.556729
6     6  8.963752      21  37.131934       0   157.374157
7     7  0.279303      28  37.411236       0    43.955024
8     8  8.586821      36  45.998057       0   377.433921
9     9  8.899657      45  54.897714       0  3359.032396 → cumprod样本的累计积

   key1      key2  key1_s     key2_s  key1_p       key2_p
0   0.0  4.667989     0.0   4.667989     0.0     4.667989
1   1.0  4.667989     1.0   9.004614     0.0    20.243318
2   2.0  4.667989     3.0   9.751466     0.0    20.243318
3   3.0  9.670919     6.0  19.422386     0.0   146.212377
4   4.0  9.670919    10.0  28.154431     0.0  1276.733069
5   5.0  9.670919    15.0  28.168182     0.0  1276.733069
6   6.0  9.670919    21.0  37.131934     0.0  1276.733069
7   7.0  9.670919    28.0  37.411236     0.0  1276.733069
8   8.0  9.670919    36.0  45.998057     0.0  1276.733069
9   9.0  9.670919    45.0  54.897714     0.0  3359.032396 
    key1      key2  key1_s    key2_s  key1_p    key2_p
0   0.0  4.667989     0.0  4.667989     0.0  4.667989
1   0.0  4.336625     0.0  4.667989     0.0  4.667989
2   0.0  0.746852     0.0  4.667989     0.0  4.667989
3   0.0  0.746852     0.0  4.667989     0.0  4.667989
4   0.0  0.746852     0.0  4.667989     0.0  4.667989
5   0.0  0.013751     0.0  4.667989     0.0  4.667989
6   0.0  0.013751     0.0  4.667989     0.0  4.667989
7   0.0  0.013751     0.0  4.667989     0.0  4.667989
8   0.0  0.013751     0.0  4.667989     0.0  4.667989
9   0.0  0.013751     0.0  4.667989     0.0  4.667989 → cummax,cummin分别求累计最大值,累计最小值

 

# 唯一值:.unique()

s = pd.Series(list(asdvasdcfgg))
sq = s.unique()
print(s)
print(sq,type(sq))
print(pd.Series(sq))
# 得到一个唯一值数组
# 通过pd.Series重新变成新的Series

sq.sort()
print(sq)
# 重新排序

  输出:

0     a
1     s
2     d
3     v
4     a
5     s
6     d
7     c
8     f
9     g
10    g
dtype: object
[a s d v c f g] <class numpy.ndarray>
0    a
1    s
2    d
3    v
4    c
5    f
6    g
dtype: object
[a c d f g s v]

 

# 值计数:.value_counts()

sc = s.value_counts(sort = False)  # 也可以这样写:pd.value_counts(sc, sort = False)
print(sc)
# 得到一个新的Series,计算出不同值出现的频率
# sort参数:排序,默认为True

  输出:

s    2
d    2
v    1
c    1
a    2
g    2
f    1
dtype: int64

 

# 成员资格:.isin()

s = pd.Series(np.arange(10,15))
df = pd.DataFrame({key1:list(asdcbvasd),
                  key2:np.arange(4,13)})
print(s)
print(df)
print(-----)

print(s.isin([5,14]))
print(df.isin([a,bc,10,8]))
# 用[]表示
# 得到一个布尔值的Series或者Dataframe

  输出:

0    10
1    11
2    12
3    13
4    14
dtype: int32
  key1  key2
0    a     4
1    s     5
2    d     6
3    c     7
4    b     8
5    v     9
6    a    10
7    s    11
8    d    12
-----
0    False
1    False
2    False
3    False
4     True
dtype: bool
    key1   key2
0   True  False
1  False  False
2  False  False
3  False  False
4  False   True
5  False  False
6   True  False
7  False  False
8  False  False

 

Pandas之DataFrame——Part 3

标签:.data   中位数   numpy   panda   []   series   style   port   .so   

原文地址:https://www.cnblogs.com/654321cc/p/9351806.html

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