Python机器学习入门到高级:数据清洗(含详细代码)

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在上一篇文章中,介绍了如何使用python导入数据,导入数据后的第二步往往就是数据清洗,下面我们来看看如何使用pandas进行数据清洗工作

导入相关库

import pandas as pd

dataframe = pd.read_csv(r'C:/Users/DELL/data-science-learning/python数据分析笔记/探索性数据分析/train.csv')
dataframe.head(5)
PassengerIdSurvivedPclassNameSexAgeSibSpParchTicketFareCabinEmbarked
0103Braund, Mr. Owen Harrismale22.010A/5 211717.2500NaNS
1211Cumings, Mrs. John Bradley (Florence Briggs Th...female38.010PC 1759971.2833C85C
2313Heikkinen, Miss. Lainafemale26.000STON/O2. 31012827.9250NaNS
3411Futrelle, Mrs. Jacques Heath (Lily May Peel)female35.01011380353.1000C123S
4503Allen, Mr. William Henrymale35.0003734508.0500NaNS

🥇1.总览数据

  • 查看数据维度
dataframe.shape
(891, 12)
  • 描述性统计分析
dataframe.describe()
PassengerIdSurvivedPclassAgeSibSpParchFare
count891.000000891.000000891.000000714.000000891.000000891.000000891.000000
mean446.0000000.3838382.30864229.6991180.5230080.38159432.204208
std257.3538420.4865920.83607114.5264971.1027430.80605749.693429
min1.0000000.0000001.0000000.4200000.0000000.0000000.000000
25%223.5000000.0000002.00000020.1250000.0000000.0000007.910400
50%446.0000000.0000003.00000028.0000000.0000000.00000014.454200
75%668.5000001.0000003.00000038.0000001.0000000.00000031.000000
max891.0000001.0000003.00000080.0000008.0000006.000000512.329200

🥈2.筛选数据

  • 过滤所有女性和年龄大于60岁的乘客
dataframe[(dataframe['Sex'] == 'female') & (dataframe['Age']>=60)]
PassengerIdSurvivedPclassNameSexAgeSibSpParchTicketFareCabinEmbarked
27527611Andrews, Miss. Kornelia Theodosiafemale63.0101350277.9583D7S
36636711Warren, Mrs. Frank Manley (Anna Sophia Atkinson)female60.01011081375.2500D37C
48348413Turkula, Mrs. (Hedwig)female63.00041349.5875NaNS
82983011Stone, Mrs. George Nelson (Martha Evelyn)female62.00011357280.0000B28NaN

可以看出,一共有四名年龄大于60岁的女性乘客

🥉3.替换数据

  • female换成woman,将male换成man
dataframe['Sex'].replace(['female','male'],['woman','man']).head(5)
0      man
1    woman
2    woman
3    woman
4      man
Name: Sex, dtype: object

🏅4.更改列名

  • 查看所有列名
dataframe.columns
Index(['PassengerId', 'Survived', 'Pclass', 'Name', 'Sex', 'Age', 'SibSp',
       'Parch', 'Ticket', 'Fare', 'Cabin', 'Embarked'],
      dtype='object')
  • 重命名列
PassengerIdSurvivedPassenger ClassNameSexAgeSibSpParchTicketFareCabinEmbarked
0103Braund, Mr. Owen Harrismale22.010A/5 211717.2500NaNS
1211Cumings, Mrs. John Bradley (Florence Briggs Th...female38.010PC 1759971.2833C85C
2313Heikkinen, Miss. Lainafemale26.000STON/O2. 31012827.9250NaNS
3411Futrelle, Mrs. Jacques Heath (Lily May Peel)female35.01011380353.1000C123S
4503Allen, Mr. William Henrymale35.0003734508.0500NaNS
dataframe.rename(columns={'Pclass':'Passenger Class','Sex':'Gender'}).head()
PassengerIdSurvivedPassenger ClassNameGenderAgeSibSpParchTicketFareCabinEmbarked
0103Braund, Mr. Owen Harrismale22.010A/5 211717.2500NaNS
1211Cumings, Mrs. John Bradley (Florence Briggs Th...female38.010PC 1759971.2833C85C
2313Heikkinen, Miss. Lainafemale26.000STON/O2. 31012827.9250NaNS
3411Futrelle, Mrs. Jacques Heath (Lily May Peel)female35.01011380353.1000C123S
4503Allen, Mr. William Henrymale35.0003734508.0500NaNS

🥇5.查找唯一值

pandas中,我们可以使用unique()查找唯一值

# 查找唯一值
dataframe['Sex'].unique()
array(['male', 'female'], dtype=object)
# 显示唯一值出现的个数
dataframe['Sex'].value_counts()
male      577
female    314
Name: Sex, dtype: int64
# 查找类型票的数量
dataframe['Pclass'].value_counts()
3    491
1    216
2    184
Name: Pclass, dtype: int64
# 查找唯一值的种类
dataframe['Pclass'].nunique()

3

🥈6.查找缺失值

# 查找空数据
dataframe[dataframe['Age'].isnull()].head()
PassengerIdSurvivedPclassNameSexAgeSibSpParchTicketFareCabinEmbarked
5603Moran, Mr. JamesmaleNaN003308778.4583NaNQ
171812Williams, Mr. Charles EugenemaleNaN0024437313.0000NaNS
192013Masselmani, Mrs. FatimafemaleNaN0026497.2250NaNC
262703Emir, Mr. Farred ChehabmaleNaN0026317.2250NaNC
282913O'Dwyer, Miss. Ellen "Nellie"femaleNaN003309597.8792NaNQ

pandas没有NaN 如果想要处理的话必须导入numpy

import numpy as np
dataframe['Sex'].replace('male',np.nan).head()
0       NaN
1    female
2    female
3    female
4       NaN
Name: Sex, dtype: object

🥉7.删除列或行

# 删除一列,采用drop方法,并传入参数axis
dataframe.drop('Age',axis=1).head()
PassengerIdSurvivedPclassNameSexSibSpParchTicketFareCabinEmbarked
0103Braund, Mr. Owen Harrismale10A/5 211717.2500NaNS
1211Cumings, Mrs. John Bradley (Florence Briggs Th...female10PC 1759971.2833C85C
2313Heikkinen, Miss. Lainafemale00STON/O2. 31012827.9250NaNS
3411Futrelle, Mrs. Jacques Heath (Lily May Peel)female1011380353.1000C123S
4503Allen, Mr. William Henrymale003734508.0500NaNS
#删除行
dataframe.drop(1)
# 删除重复行 使用subset参数指明要删除的列
dataframe.drop_duplicates(subset='Sex').head()
NamePClassAgeSexSurvivedSexCode
0Allen, Miss Elisabeth Walton1st29.0female11
2Allison, Mr Hudson Joshua Creighton1st30.0male00

🏅8. groupby分组

  • 计算男性和女性的平均值

思路一,将所有男性和女性的条件进行选取分别计算

man = dataframe[dataframe['Sex']=='male']
woman = dataframe[dataframe['Sex']=='female']
print(man.mean())
print(woman.mean())
Age         31.014338
Survived     0.166863
SexCode      0.000000
dtype: float64
Age         29.396424
Survived     0.666667
SexCode      1.000000
dtype: float64

思路二,用groupby方法简化


dataframe.groupby('Sex').mean()
AgeSurvivedSexCode
Sex
female29.3964240.6666671.0
male31.0143380.1668630.0
# 按行分组,计算行数
dataframe.groupby('Sex')['Name'].count()
Sex
female    462
male      851
Name: Name, dtype: int64
dataframe.groupby(['Sex','Survived']).mean()
PassengerIdPclassAgeSibSpParchFare
SexSurvived
female0434.8518522.85185225.0468751.2098771.03703723.024385
1429.6995711.91845528.8477160.5150210.51502151.938573
male0449.1217952.47649631.6180560.4401710.20726521.960993
1475.7247712.01834927.2760220.3853210.35779840.821484

🥇9.按照时间段来进行分组

  • 使用resample参数来进行取样本
# 创建时期范围
time_index = pd.date_range('06/06/2017', periods=100000, freq='30S') # periods表示有多少数据,freq表示步长
dataframe = pd.DataFrame(index=time_index)
# 创建一个随机变量
dataframe['Sale_Amout'] = np.random.randint(1, 10, 100000)
# resample 参数,按周对行分组,计算每一周的总和
dataframe.resample('W').sum()

Sale_Amout
2017-06-1186292
2017-06-18100359
2017-06-25100907
2017-07-02100868
2017-07-09100522
2017-07-1610478
# 使用resample可以按一组时间间隔来进行分组,然后计算每一个时间组的某个统计量
dataframe.resample('2W').mean()
Sale_Amout
2017-06-114.993750
2017-06-254.991716
2017-07-094.994792
2017-07-235.037500
dataframe.resample('M').count()
Sale_Amout
2017-06-3072000
2017-07-3128000
# resample默认是以最后一个数据作 使用label参数可以进行调整
dataframe.resample('M', label='left').count()

Sale_Amout
2017-05-3172000
2017-06-3028000

🥈10.遍历一个列的数据

dataframe = pd.read_csv(url)
# 以大写的形势打印前两行的名字
for name in dataframe['Name'][0:2]:
    print(name.upper())
ALLEN, MISS ELISABETH WALTON
ALLISON, MISS HELEN LORAINE

🥉11.对一列的所有元素应用某个函数

def uppercase(x):
    return x.upper()
dataframe['Name'].apply(uppercase)[0:2]
0    ALLEN, MISS ELISABETH WALTON
1     ALLISON, MISS HELEN LORAINE
Name: Name, dtype: object

🏅12. pandas高级函数

dataframe.groupby('Sex').apply(lambda x:x.count())

NamePClassAgeSexSurvivedSexCode
Sex
female462462288462462462
male851851468851851851

通过联合使用groupbyapply,我们就能计算自定义的统计量
例如上面我们发现agecabin具有大量的缺失值

🥇13. 连接多个Dataframe

data_a = {'id':['1', '2', '3'],
          'first': ['Alex', 'Amy', 'Allen'],
          'last': ['Anderson', 'Ackerman', 'Ali']}
dataframe_a = pd.DataFrame(data_a, columns=['id','first', 'last'])
data_b = {'id':['4', '5', '6'],
          'first': ['Billy', 'Brian', 'Bran'],
          'last': ['Bonder', 'Black', 'Balwner']}
dataframe_b = pd.DataFrame(data_b, columns=['id','first', 'last'])
pd.concat([dataframe_a, dataframe_b], axis=0)#在行的方向进行
idfirstlast
01AlexAnderson
12AmyAckerman
23AllenAli
04BillyBonder
15BrianBlack
26BranBalwner
pd.concat([dataframe_a, dataframe_b], axis=1)#在列的方向进行
idfirstlastidfirstlast
01AlexAnderson4BillyBonder
12AmyAckerman5BrianBlack
23AllenAli6BranBalwner
# 也可以用append方法进行添加
c = pd.Series([10, 'Chris', 'Chillon'], index=['id','first','last'])
dataframe.append(c, ignore_index=True)#如果c原来有名字忽略
idfirstlast
01AlexAnderson
12AmyAckerman
23AllenAli
310ChrisChillon
posted @ 2022-08-27 11:08  JOJO数据科学  阅读(170)  评论(0编辑  收藏  举报