hands-on-data-analysis 第二单元 - 数据清洗及特征处理
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1.缺失值观察与处理
首先当然是导入相应的模块
#加载所需的库
import numpy as np
import pandas as pd1.1 缺失值观察
接下来就是观察缺失值:
df.info()
df.info()RangeIndex: 891 entries, 0 to 890
Data columns (total 12 columns):
 #   Column       Non-Null Count  Dtype  
---  ------       --------------  -----  
 0   PassengerId  891 non-null    int64  
 1   Survived     891 non-null    int64  
 2   Pclass       891 non-null    int64  
 3   Name         891 non-null    object 
 4   Sex          891 non-null    object 
 5   Age          714 non-null    float64
 6   SibSp        891 non-null    int64  
 7   Parch        891 non-null    int64  
 8   Ticket       891 non-null    object 
 9   Fare         891 non-null    float64
 10  Cabin        204 non-null    object 
 11  Embarked     889 non-null    object 
dtypes: float64(2), int64(5), object(5)
memory usage: 83.7+ KBdf.isnull().sum()
PassengerId      0
Survived         0
Pclass           0
Name             0
Sex              0
Age            177
SibSp            0
Parch            0
Ticket           0
Fare             0
Cabin          687
Embarked         2
dtype: int641.2 缺失值处理
数值列读取数据后,空缺值的NaN为浮点型,最好用np.nan判断是否是NaN。
isnull()可以筛选出缺失的值
df[df['Age'].isnull()]
df.tail(5)np.isnan()也可以筛选出缺失的值
df[np.isnan(df['Age'])]
df.tail(5)但是,np.isnan不可以用来与任何数值进行>,==,!=之类的比较
np.nan != np.nanTruedf.dropna(inplace=True)可以用来丢弃掉有NaN数据的那一行,其中inplace=True表示修改原数据。
https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.dropna.html
df.fillna(0,inplace=True) 可以用来将NaN数据用0填充,其中inplace=True表示修改原数据。
https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.fillna.html
2.重复值
重复值可以使用df.duplicated()来查询
df[df.duplicated()]drop_duplicates()可以用来删除重复值
df = df.drop_duplicates()3.分箱(离散化)处理
3.1.平均分箱
# 将连续变量Age平均分箱成5个年龄段,并分别用类别变量12345表示
df['AgeBand'] = pd.cut(df['Age'], 5,labels = [1,2,3,4,5])3.2.划分分箱
df['AgeBand'] = pd.cut(df['Age'],[0,5,15,30,50,80],labels = [1,2,3,4,5])3.3.概率分箱
df['AgeBand'] = pd.qcut(df['Age'],[0,0.1,0.3,0.5,0.7,0.9],labels = [1,2,3,4,5])4.文本变量进行转换
4.1. 查看文本变量名和种类
#方法一: value_counts
df['Sex'].value_counts()#方法二: unique
df['Sex'].unique()
df['Sex'].nunique()4.2 文本转换
#将类别文本转换为12345
#方法一: replace
df['Sex_num'] = df['Sex'].replace(['male','female'],[1,2])#方法二: map
df['Sex_num'] = df['Sex'].map({'male': 1, 'female': 2})#方法三: 使用sklearn.preprocessing的LabelEncoder
from sklearn.preprocessing import LabelEncoder
for feat in ['Cabin', 'Ticket']:
    lbl = LabelEncoder()
    print(f"feat is {feat}") 
    print("end")
    label_dict = dict(zip(df[feat].unique(), range(df[feat].nunique())))
    print(f"label_dict is {label_dict}")
    print("end label_dict")
    df[feat + "_labelEncode"] = df[feat].map(label_dict)
    df[feat + "_labelEncode"] = lbl.fit_transform(df[feat].astype(str))5. 独热编码
#OneHotEncoder
for feat in ["Age", "Embarked"]:
    x = pd.get_dummies(df[feat], prefix=feat)
    df = pd.concat([df, x], axis=1)
df.head()参考资料
https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.dropna.html
https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.DataFrame.fillna.html
https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.cut.html
https://pandas.pydata.org/pandas-docs/stable/reference/api/pandas.qcut.html
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hands-on-data-analysis 第二单元 - 飞桨AI Studio (baidu.com)










