检查pandas DataFrame中的特定值(在单元格中)是否为NaN,无法使用ix或iloc

Ced*_*olo 18 python nan dataframe pandas

可以说我有以下内容pandas DataFrame:

import pandas as pd
df = pd.DataFrame({"A":[1,pd.np.nan,2], "B":[5,6,0]})
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看起来像这样:

>>> df
     A  B
0  1.0  5
1  NaN  6
2  2.0  0
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第一种选择

我知道一种方法来检查特定值是否NaN为,如下所示:

>>> df.isnull().ix[1,0]
True
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第二种选择(不工作)

我认为下面的选项,使用ix,也可以,但它不是:

>>> df.ix[1,0]==pd.np.nan
False
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我也尝试iloc过相同的结果:

>>> df.iloc[1,0]==pd.np.nan
False
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但是,如果我使用ix或检查这些值iloc:

>>> df.ix[1,0]
nan
>>> df.iloc[1,0]
nan
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那么,为什么第二种选择不起作用呢?是否可以NaN使用ix或检查值iloc

Max*_*axU 40

试试这个:

In [107]: pd.isnull(df.iloc[1,0])
Out[107]: True
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  • @Cedric也是`np.isnan(df.iloc [1,0])`来检查数字是否为nan. (2认同)

hyg*_*ull 9

楼上的回答太好了。为了更好地理解,这里有一个例子。

>>> import pandas as pd
>>>
>>> import numpy as np
>>>
>>> pd.Series([np.nan, 34, 56])
0     NaN
1    34.0
2    56.0
dtype: float64
>>>
>>> s = pd.Series([np.nan, 34, 56])
>>> pd.isnull(s[0])
True
>>>
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我也试过几次,下面的试验没有奏效。感谢@MaxU.

>>> s[0]
nan
>>>
>>> s[0] == np.nan
False
>>>
>>> s[0] is np.nan
False
>>>
>>> s[0] == 'nan'
False
>>>
>>> s[0] == pd.np.nan
False
>>>
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Pra*_*era 5

pd.isna(cell_value)可用于检查给定的单元格值是否为 nan。或者,pd.notna(cell_value)检查相反。

来自熊猫的源代码:

def isna(obj):
    """
    Detect missing values for an array-like object.

    This function takes a scalar or array-like object and indicates
    whether values are missing (``NaN`` in numeric arrays, ``None`` or ``NaN``
    in object arrays, ``NaT`` in datetimelike).

    Parameters
    ----------
    obj : scalar or array-like
        Object to check for null or missing values.

    Returns
    -------
    bool or array-like of bool
        For scalar input, returns a scalar boolean.
        For array input, returns an array of boolean indicating whether each
        corresponding element is missing.

    See Also
    --------
    notna : Boolean inverse of pandas.isna.
    Series.isna : Detect missing values in a Series.
    DataFrame.isna : Detect missing values in a DataFrame.
    Index.isna : Detect missing values in an Index.

    Examples
    --------
    Scalar arguments (including strings) result in a scalar boolean.

    >>> pd.isna('dog')
    False

    >>> pd.isna(np.nan)
    True
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