获取上一行的值并计算新列pandas python [英] get previous row's value and calculate new column pandas python

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本文介绍了获取上一行的值并计算新列pandas python的处理方法,对大家解决问题具有一定的参考价值,需要的朋友们下面随着小编来一起学习吧!

问题描述

有没有办法回顾上一行并计算一个新变量?因此,只要上一行相同,那么(先前的更改)-(当前的更改)是什么,并将其归因于新列中的先前的"ChangeEvent"?

Is there a way to look back to a previous row, and calculate a new variable? so as long as the previous row is the same case what is the (previous change) - (current change), and attribute it to the previous 'ChangeEvent' in new columns?

这是我的DataFrame

here is my DataFrame

>>> df
  ChangeEvent StartEvent  case              change      open  
0    Homeless   Homeless     1 2014-03-08 00:00:00 2014-02-08  
1       other   Homeless     1 2014-04-08 00:00:00 2014-02-08     
2    Homeless   Homeless     1 2014-05-08 00:00:00 2014-02-08      
3        Jail   Homeless     1 2014-06-08 00:00:00 2014-02-08     
4        Jail       Jail     2 2014-06-08 00:00:00 2014-02-08   

添加列

Jail  Homeless case
 0    6        1
 0    30       1
 0    0        1

...等等

这是df版本

import pandas as pd
import datetime as DT
d = {'case' : pd.Series([1,1,1,1,2]),
'open' : pd.Series([DT.datetime(2014, 3, 2), DT.datetime(2014, 3, 2),DT.datetime(2014, 3, 2),DT.datetime(2014, 3, 2),DT.datetime(2014, 3, 2)]),
'change' : pd.Series([DT.datetime(2014, 3, 8), DT.datetime(2014, 4, 8),DT.datetime(2014, 5, 8),DT.datetime(2014, 6, 8),DT.datetime(2014, 6, 8)]),
'StartEvent' : pd.Series(['Homeless','Homeless','Homeless','Homeless','Jail']),
'ChangeEvent' : pd.Series(['Homeless','irrelivant','Homeless','Jail','Jail']),
'close' : pd.Series([DT.datetime(2015, 3, 2), DT.datetime(2015, 3, 2),DT.datetime(2015, 3, 2),DT.datetime(2015, 3, 2),DT.datetime(2015, 3, 2)])}
df=pd.DataFrame(d)

推荐答案

获取前一种方法是使用shift方法:

The way to get the previous is using the shift method:

In [11]: df1.change.shift(1)
Out[11]:
0          NaT
1   2014-03-08
2   2014-04-08
3   2014-05-08
4   2014-06-08
Name: change, dtype: datetime64[ns]

现在您可以减去这些列. 注意:这是0.13.1版本(日期时间的东西最近有很多工作,因此YMMV使用较旧的版本).

Now you can subtract these columns. Note: This is with 0.13.1 (datetime stuff has had a lot of work recently, so YMMV with older versions).

In [12]: df1.change.shift(1) - df1.change
Out[12]:
0        NaT
1   -31 days
2   -30 days
3   -31 days
4     0 days
Name: change, dtype: timedelta64[ns]

您可以将其应用于每个案例/组:

You can just apply this to each case/group:

In [13]: df.groupby('case')['change'].apply(lambda x: x.shift(1) - x)
Out[13]:
0        NaT
1   -31 days
2   -30 days
3   -31 days
4        NaT
dtype: timedelta64[ns]

这篇关于获取上一行的值并计算新列pandas python的文章就介绍到这了,希望我们推荐的答案对大家有所帮助,也希望大家多多支持IT屋!

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