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2. Pandas之:Pandas高级教程以铁达尼号真实数据为例

简介

今天我们会讲解一下Pandas的高级教程,包括读写文件、选取子集和图形表示等。

读写文件

数据处理的一个关键步骤就是读取文件进行分析,然后将分析处理结果再次写入文件。

Pandas支持多种文件格式的读取和写入:

In [108]: pd.read_
read_clipboard() read_excel() read_fwf() read_hdf() read_json read_parquet read_sas read_sql_query read_stata
read_csv read_feather() read_gbq() read_html read_msgpack read_pickle read_sql read_sql_table read_table

接下来我们会以Pandas官网提供的Titanic.csv为例来讲解Pandas的使用。

Titanic.csv提供了800多个泰坦利特号上乘客的信息,是一个891 rows x 12 columns的矩阵。

我们使用Pandas来读取这个csv:

In [5]: titanic=pd.read_csv("titanic.csv")

read_csv方法会将csv文件转换成为pandas 的DataFrame

默认情况下我们直接使用DF变量,会默认展示前5行和后5行数据:

In [3]: titanic
Out[3]:
PassengerId Survived Pclass Name Sex ... Parch Ticket Fare Cabin Embarked
0 1 0 3 Braund, Mr. Owen Harris male ... 0 A/5 21171 7.2500 NaN S
1 2 1 1 Cumings, Mrs. John Bradley (Florence Briggs Th... female ... 0 PC 17599 71.2833 C85 C
2 3 1 3 Heikkinen, Miss. Laina female ... 0 STON/O2. 3101282 7.9250 NaN S
3 4 1 1 Futrelle, Mrs. Jacques Heath (Lily May Peel) female ... 0 113803 53.1000 C123 S
4 5 0 3 Allen, Mr. William Henry male ... 0 373450 8.0500 NaN S
.. ... ... ... ... ... ... ... ... ... ... ...
886 887 0 2 Montvila, Rev. Juozas male ... 0 211536 13.0000 NaN S
887 888 1 1 Graham, Miss. Margaret Edith female ... 0 112053 30.0000 B42 S
888 889 0 3 Johnston, Miss. Catherine Helen "Carrie" female ... 2 W./C. 6607 23.4500 NaN S
889 890 1 1 Behr, Mr. Karl Howell male ... 0 111369 30.0000 C148 C
890 891 0 3 Dooley, Mr. Patrick male ... 0 370376 7.7500 NaN Q

[891 rows x 12 columns]

可以使用head(n)和tail(n)来指定特定的行数:

In [4]: titanic.head(8)
Out[4]:
PassengerId Survived Pclass Name Sex ... Parch Ticket Fare Cabin Embarked
0 1 0 3 Braund, Mr. Owen Harris male ... 0 A/5 21171 7.2500 NaN S
1 2 1 1 Cumings, Mrs. John Bradley (Florence Briggs Th... female ... 0 PC 17599 71.2833 C85 C
2 3 1 3 Heikkinen, Miss. Laina female ... 0 STON/O2. 3101282 7.9250 NaN S
3 4 1 1 Futrelle, Mrs. Jacques Heath (Lily May Peel) female ... 0 113803 53.1000 C123 S
4 5 0 3 Allen, Mr. William Henry male ... 0 373450 8.0500 NaN S
5 6 0 3 Moran, Mr. James male ... 0 330877 8.4583 NaN Q
6 7 0 1 McCarthy, Mr. Timothy J male ... 0 17463 51.8625 E46 S
7 8 0 3 Palsson, Master. Gosta Leonard male ... 1 349909 21.0750 NaN S

[8 rows x 12 columns]

使用dtypes可以查看每一列的数据类型:

In [5]: titanic.dtypes
Out[5]:
PassengerId int64
Survived int64
Pclass int64
Name object
Sex object
Age float64
SibSp int64
Parch int64
Ticket object
Fare float64
Cabin object
Embarked object
dtype: object

使用to_excel可以将DF转换为excel文件,使用read_excel可以再次读取excel文件:

In [11]: titanic.to_excel('titanic.xlsx', sheet_name='passengers', index=False)

In [12]: titanic = pd.read_excel('titanic.xlsx', sheet_name='passengers')

使用info()可以来对DF进行一个初步的统计:

In [14]: titanic.info()
<class 'pandas.core.frame.DataFrame'>
RangeIndex: 891 entries, 0 to 890
Data columns (total 12 columns):
PassengerId 891 non-null int64
Survived 891 non-null int64
Pclass 891 non-null int64
Name 891 non-null object
Sex 891 non-null object
Age 714 non-null float64
SibSp 891 non-null int64
Parch 891 non-null int64
Ticket 891 non-null object
Fare 891 non-null float64
Cabin 204 non-null object
Embarked 889 non-null object
dtypes: float64(2), int64(5), object(5)
memory usage: 83.6+ KB

DF的选择

选择列数据

DF的head或者tail方法只能显示所有的列数据,下面的方法可以选择特定的列数据。

In [15]: ages = titanic["Age"]

In [16]: ages.head()
Out[16]:
0 22.0
1 38.0
2 26.0
3 35.0
4 35.0
Name: Age, dtype: float64

每一列都是一个Series:

In [6]: type(titanic["Age"])
Out[6]: pandas.core.series.Series

In [7]: titanic["Age"].shape
Out[7]: (891,)

还可以多选:

In [8]: age_sex = titanic[["Age", "Sex"]]

In [9]: age_sex.head()
Out[9]:
Age Sex
0 22.0 male
1 38.0 female
2 26.0 female
3 35.0 female
4 35.0 male

如果选择多列的话,返回的结果就是一个DF类型:

In [10]: type(titanic[["Age", "Sex"]])
Out[10]: pandas.core.frame.DataFrame

In [11]: titanic[["Age", "Sex"]].shape
Out[11]: (891, 2)

选择行数据

上面我们讲到了怎么选择列数据,下面我们来看看怎么选择行数据:

选择客户年龄大于35岁的:

In [12]: above_35 = titanic[titanic["Age"] > 35]

In [13]: above_35.head()
Out[13]:
PassengerId Survived Pclass Name Sex ... Parch Ticket Fare Cabin Embarked
1 2 1 1 Cumings, Mrs. John Bradley (Florence Briggs Th... female ... 0 PC 17599 71.2833 C85 C
6 7 0 1 McCarthy, Mr. Timothy J male ... 0 17463 51.8625 E46 S
11 12 1 1 Bonnell, Miss. Elizabeth female ... 0 113783 26.5500 C103 S
13 14 0 3 Andersson, Mr. Anders Johan male ... 5 347082 31.2750 NaN S
15 16 1 2 Hewlett, Mrs. (Mary D Kingcome) female ... 0 248706 16.0000 NaN S

[5 rows x 12 columns]

使用isin选择Pclass在2和3的所有客户:

In [16]: class_23 = titanic[titanic["Pclass"].isin([2, 3])]
In [17]: class_23.head()
Out[17]:
PassengerId Survived Pclass Name Sex Age SibSp Parch Ticket Fare Cabin Embarked
0 1 0 3 Braund, Mr. Owen Harris male 22.0 1 0 A/5 21171 7.2500 NaN S
2 3 1 3 Heikkinen, Miss. Laina female 26.0 0 0 STON/O2. 3101282 7.9250 NaN S
4 5 0 3 Allen, Mr. William Henry male 35.0 0 0 373450 8.0500 NaN S
5 6 0 3 Moran, Mr. James male NaN 0 0 330877 8.4583 NaN Q
7 8 0 3 Palsson, Master. Gosta Leonard male 2.0 3 1 349909 21.0750 NaN S

上面的isin等于:

In [18]: class_23 = titanic[(titanic["Pclass"] == 2) | (titanic["Pclass"] == 3)]

筛选Age不是空的:

In [20]: age_no_na = titanic[titanic["Age"].notna()]

In [21]: age_no_na.head()
Out[21]:
PassengerId Survived Pclass Name Sex ... Parch Ticket Fare Cabin Embarked
0 1 0 3 Braund, Mr. Owen Harris male ... 0 A/5 21171 7.2500 NaN S
1 2 1 1 Cumings, Mrs. John Bradley (Florence Briggs Th... female ... 0 PC 17599 71.2833 C85 C
2 3 1 3 Heikkinen, Miss. Laina female ... 0 STON/O2. 3101282 7.9250 NaN S
3 4 1 1 Futrelle, Mrs. Jacques Heath (Lily May Peel) female ... 0 113803 53.1000 C123 S
4 5 0 3 Allen, Mr. William Henry male ... 0 373450 8.0500 NaN S

[5 rows x 12 columns]

同时选择行和列

我们可以同时选择行和列。

使用loc和iloc可以进行行和列的选择,他们两者的区别是loc是使用名字进行选择,iloc是使用数字进行选择。

选择age>35的乘客名:

In [23]: adult_names = titanic.loc[titanic["Age"] > 35, "Name"]

In [24]: adult_names.head()
Out[24]:
1 Cumings, Mrs. John Bradley (Florence Briggs Th...
6 McCarthy, Mr. Timothy J
11 Bonnell, Miss. Elizabeth
13 Andersson, Mr. Anders Johan
15 Hewlett, Mrs. (Mary D Kingcome)
Name: Name, dtype: object

loc中第一个值表示行选择,第二个值表示列选择。

使用iloc进行选择:

In [25]: titanic.iloc[9:25, 2:5]
Out[25]:
Pclass Name Sex
9 2 Nasser, Mrs. Nicholas (Adele Achem) female
10 3 Sandstrom, Miss. Marguerite Rut female
11 1 Bonnell, Miss. Elizabeth female
12 3 Saundercock, Mr. William Henry male
13 3 Andersson, Mr. Anders Johan male
.. ... ... ...
20 2 Fynney, Mr. Joseph J male
21 2 Beesley, Mr. Lawrence male
22 3 McGowan, Miss. Anna "Annie" female
23 1 Sloper, Mr. William Thompson male
24 3 Palsson, Miss. Torborg Danira female

[16 rows x 3 columns]

使用plots作图

怎么将DF转换成为多样化的图形展示呢?

要想在命令行中使用matplotlib作图,那么需要启动ipython的QT环境:

ipython qtconsole --pylab=inline

直接使用plot来展示一下上面我们读取的乘客信息:

import matplotlib.pyplot as plt

import pandas as pd

titanic = pd.read_excel('titanic.xlsx', sheet_name='passengers')

titanic.plot()

横坐标就是DF中的index,列坐标是各个列的名字。注意上面的列只展示的是数值类型的。

我们只展示age信息:

titanic['Age'].plot()

默认的是柱状图,我们可以转换图形的形式,比如点图:

titanic.plot.scatter(x="PassengerId",y="Age", alpha=0.5)

选择数据中的PassengerId作为x轴,age作为y轴:

除了散点图,还支持很多其他的图像:

[method_name for method_name in dir(titanic.plot) if not method_name.startswith("_")]
Out[11]:
['area',
'bar',
'barh',
'box',
'density',
'hexbin',
'hist',
'kde',
'line',
'pie',
'scatter']

再看一个box图:

titanic['Age'].plot.box()

可以看到,乘客的年龄大多集中在20-40岁之间。

还可以将选择的多列分别作图展示:

titanic.plot.area(figsize=(12, 4), subplots=True)

指定特定的列:

titanic[['Age','Pclass']].plot.area(figsize=(12, 4), subplots=True)

还可以先画图,然后填充:

fig, axs = plt.subplots(figsize=(12, 4));

先画一个空的图,然后对其进行填充:

titanic['Age'].plot.area(ax=axs);

axs.set_ylabel("Age");

fig

使用现有的列创建新的列

有时候,我们需要对现有的列进行变换,以得到新的列,比如我们想添加一个Age2列,它的值是Age列+10,则可以这样:

titanic["Age2"]=titanic["Age"]+10;

titanic[["Age","Age2"]].head()
Out[34]:
Age Age2
0 22.0 32.0
1 38.0 48.0
2 26.0 36.0
3 35.0 45.0
4 35.0 45.0

还可以对列进行重命名:

titanic_renamed = titanic.rename(
...: columns={"Age": "Age2",
...: "Pclass": "Pclas2"})

列名转换为小写:

titanic_renamed = titanic_renamed.rename(columns=str.lower)

进行统计

我们来统计下乘客的平均年龄:

titanic["Age"].mean()
Out[35]: 29.69911764705882

选择中位数:

titanic[["Age", "Fare"]].median()
Out[36]:
Age 28.0000
Fare 14.4542
dtype: float64

更多信息:

titanic[["Age", "Fare"]].describe()
Out[37]:
Age Fare
count 714.000000 891.000000
mean 29.699118 32.204208
std 14.526497 49.693429
min 0.420000 0.000000
25% 20.125000 7.910400
50% 28.000000 14.454200
75% 38.000000 31.000000
max 80.000000 512.329200

使用agg指定特定的聚合方法:

titanic.agg({'Age': ['min', 'max', 'median', 'skew'],'Fare': ['min', 'max', 'median', 'mean']})
Out[38]:
Age Fare
max 80.000000 512.329200
mean NaN 32.204208
median 28.000000 14.454200
min 0.420000 0.000000
skew 0.389108 NaN

可以使用groupby:

titanic[["Sex", "Age"]].groupby("Sex").mean()
Out[39]:
Age
Sex
female 27.915709
male 30.726645

groupby所有的列:

titanic.groupby("Sex").mean()
Out[40]:
PassengerId Survived Pclass Age SibSp Parch
Sex
female 431.028662 0.742038 2.159236 27.915709 0.694268 0.649682
male 454.147314 0.188908 2.389948 30.726645 0.429809 0.235702

groupby之后还可以选择特定的列:

titanic.groupby("Sex")["Age"].mean()
Out[41]:
Sex
female 27.915709
male 30.726645
Name: Age, dtype: float64

可以分类进行count:

titanic["Pclass"].value_counts()
Out[42]:
3 491
1 216
2 184
Name: Pclass, dtype: int64

上面等同于:

titanic.groupby("Pclass")["Pclass"].count()

DF重组

可以根据某列进行排序:

titanic.sort_values(by="Age").head()
Out[43]:
PassengerId Survived Pclass Name Sex \
803 804 1 3 Thomas, Master. Assad Alexander male
755 756 1 2 Hamalainen, Master. Viljo male
644 645 1 3 Baclini, Miss. Eugenie female
469 470 1 3 Baclini, Miss. Helene Barbara female
78 79 1 2 Caldwell, Master. Alden Gates male

根据多列排序:

titanic.sort_values(by=['Pclass', 'Age'], ascending=False).head()
Out[44]:
PassengerId Survived Pclass Name Sex Age \
851 852 0 3 Svensson, Mr. Johan male 74.0
116 117 0 3 Connors, Mr. Patrick male 70.5
280 281 0 3 Duane, Mr. Frank male 65.0
483 484 1 3 Turkula, Mrs. (Hedwig) female 63.0
326 327 0 3 Nysveen, Mr. Johan Hansen male 61.0

选择特定的行和列数据,下面的例子我们将会选择性别为女性的部分数据:

female=titanic[titanic['Sex']=='female']

female_subset=female[["Age","Pclass","PassengerId","Survived"]].sort_values(["Pclass"]).groupby(["Pclass"]).head(2)

female_subset
Out[58]:
Age Pclass PassengerId Survived
1 38.0 1 2 1
356 22.0 1 357 1
726 30.0 2 727 1
443 28.0 2 444 1
855 18.0 3 856 1
654 18.0 3 655 0

使用pivot可以进行轴的转换:

female_subset.pivot(columns="Pclass", values="Age")
Out[62]:
Pclass 1 2 3
1 38.0 NaN NaN
356 22.0 NaN NaN
443 NaN 28.0 NaN
654 NaN NaN 18.0
726 NaN 30.0 NaN
855 NaN NaN 18.0

female_subset.pivot(columns="Pclass", values="Age").plot()

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