使用条件语句替换 pandas DataFrame 中的条目

Replace an entry in a pandas DataFrame using a conditional statement(使用条件语句替换 pandas DataFrame 中的条目)

本文介绍了使用条件语句替换 pandas DataFrame 中的条目的处理方法,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

我想在给定条件的情况下更改 Dataframe 中条目的值.例如:

I'd like to change the value of an entry in a Dataframe given a condition. For instance:

d = pandas.read_csv('output.az.txt', names = varname)
d['uld'] = (d.trade - d.plg25)*(d.final - d.price25)

if d['uld'] > 0:
   d['uld'] = 1
else:
   d['uld'] = 0

我不明白为什么上述方法不起作用.感谢您的帮助.

I'm not understanding why the above doesn't work. Thank you for your help.

推荐答案

使用 np.where 根据简单的布尔标准设置数据:

Use np.where to set your data based on a simple boolean criteria:

In [3]:

df = pd.DataFrame({'uld':np.random.randn(10)})
df
Out[3]:
        uld
0  0.939662
1 -0.009132
2 -0.209096
3 -0.502926
4  0.587249
5  0.375806
6 -0.140995
7  0.002854
8 -0.875326
9  0.148876
In [4]:

df['uld'] = np.where(df['uld'] > 0, 1, 0)
df
Out[4]:
   uld
0    1
1    0
2    0
3    0
4    1
5    1
6    0
7    1
8    0
9    1

至于你做的失败的原因:

As for why what you did failed:

In [7]:

if df['uld'] > 0:
   df['uld'] = 1
else:
   df['uld'] = 0
---------------------------------------------------------------------------
ValueError                                Traceback (most recent call last)
<ipython-input-7-ec7d7aaa1c28> in <module>()
----> 1 if df['uld'] > 0:
      2    df['uld'] = 1
      3 else:
      4    df['uld'] = 0

C:WinPython-64bit-3.4.3.1python-3.4.3.amd64libsite-packagespandascoregeneric.py in __nonzero__(self)
    696         raise ValueError("The truth value of a {0} is ambiguous. "
    697                          "Use a.empty, a.bool(), a.item(), a.any() or a.all()."
--> 698                          .format(self.__class__.__name__))
    699 
    700     __bool__ = __nonzero__

ValueError: The truth value of a Series is ambiguous. Use a.empty, a.bool(), a.item(), a.any() or a.all().

所以错误是您尝试使用 TrueFalse 评估数组,这变得模棱两可,因为有多个值要比较,因此错误.在这种情况下,你不能真正使用推荐的 anyall 等,因为你想屏蔽你的 df 并且只设置满足条件的值,那里在 pandas 网站上对此进行了解释:http://pandas.pydata.org/pandas-docs/dev/gotchas.html 和相关问题:ValueError:具有多个元素的数组的真值不明确.使用 a.any() 或 a.all()

So the error is that you are trying to evaluate an array with True or False which becomes ambiguous because there are multiple values to compare hence the error. In this situation you can't really use the recommended any, all etc. as you are wanting to mask your df and only set the values where the condition is met, there is an explanation on the pandas site about this: http://pandas.pydata.org/pandas-docs/dev/gotchas.html and a related question here: ValueError: The truth value of an array with more than one element is ambiguous. Use a.any() or a.all()

np.where 将布尔条件作为第一个参数,如果为真则返回第二个参数,否则返回第二个参数根据需要返回第三个参数.

np.where takes a boolean condition as the first param, if that is true it'll return the second param, otherwise if false it returns the third param as you want.

更新

再次查看此内容后,您可以通过使用 astype 进行转换将布尔系列转换为 int:

Having looked at this again you can convert the boolean Series to an int by casting using astype:

In [23]:
df['uld'] = (df['uld'] > 0).astype(int)
df

Out[23]:
   uld
0    1
1    0
2    0
3    0
4    1
5    1
6    0
7    1
8    0
9    1

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