I have made a pandas dataframe from a CSV file like so:

import pandas as pd
data = pd.read_csv('dataset.csv')

In it, there's a column called CLASS. These are the values contained in CLASS:

from collections import Counter
Counter(CLASS)
Out [1]: Counter({'1': 60783, '2': 37313, '3': 2564, '4': 959, ' ': 346, 'D': 27})

Now, I add a column to the dataframe manually, and save it in a new csv:

data['DURATION'] = DURATION
data.to_csv('new_dataset.csv')

Then, when I open the new CSV and check the values in CLASS, some of them have become integers!

dataset = pd.read_csv('new_dataset.csv')
CLASS = dataset['OCCUP_CLASS']
Counter(CLASS)
Out [1]: Counter({' ': 346,
                  1: 48418,
                  '1': 12365,
                  2: 16189,
                  '2': 21124,
                  3: 848,
                  '3': 1716,
                  4: 81,
                  '4': 878,
                  'D': 43})

Why is this happening? This creates problems as I cannot plot or make histograms of CLASS anymore, while before I was able to do so:

import matplotlib.pyplot as plt
plt.plot(CLASS)
---------------------------------------------------------------------------
ValueError                                Traceback (most recent call last)
<ipython-input-158-b6bafcfd7ad5> in <module>()
      1 import matplotlib.pyplot as plt
----> 2 plt.plot(CLASS)

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\pyplot.py in plot(*args, **kwargs)
   3356                       mplDeprecation)
   3357     try:
-> 3358         ret = ax.plot(*args, **kwargs)
   3359     finally:
   3360         ax._hold = washold

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\__init__.py in inner(ax, *args, **kwargs)
   1853                         "the Matplotlib list!)" % (label_namer, func.__name__),
   1854                         RuntimeWarning, stacklevel=2)
-> 1855             return func(ax, *args, **kwargs)
   1856 
   1857         inner.__doc__ = _add_data_doc(inner.__doc__,

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\axes\_axes.py in plot(self, *args, **kwargs)
   1526 
   1527         for line in self._get_lines(*args, **kwargs):
-> 1528             self.add_line(line)
   1529             lines.append(line)
   1530 

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\axes\_base.py in add_line(self, line)
   1930             line.set_clip_path(self.patch)
   1931 
-> 1932         self._update_line_limits(line)
   1933         if not line.get_label():
   1934             line.set_label('_line%d' % len(self.lines))

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\axes\_base.py in _update_line_limits(self, line)
   1952         Figures out the data limit of the given line, updating self.dataLim.
   1953         """
-> 1954         path = line.get_path()
   1955         if path.vertices.size == 0:
   1956             return

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\lines.py in get_path(self)
    949         """
    950         if self._invalidy or self._invalidx:
--> 951             self.recache()
    952         return self._path
    953 

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\lines.py in recache(self, always)
    655         if always or self._invalidy:
    656             yconv = self.convert_yunits(self._yorig)
--> 657             y = _to_unmasked_float_array(yconv).ravel()
    658         else:
    659             y = self._y

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\matplotlib\cbook\__init__.py in _to_unmasked_float_array(x)
   2048         return np.ma.asarray(x, float).filled(np.nan)
   2049     else:
-> 2050         return np.asarray(x, float)
   2051 
   2052 

c:\users\h473\appdata\local\programs\python\python35\lib\site-packages\numpy\core\numeric.py in asarray(a, dtype, order)
    490 
    491     """
--> 492     return array(a, dtype, copy=False, order=order)
    493 
    494 

ValueError: could not convert string to float: 

enter image description here

EDIT: Adding the first 20 rows of the 2 relevant columns from the dataset:

DURATION    CLASS
10          1
14          1
-1          1
-1          1
0           1
-1          1
14          2
8           2
-1          1
14          3
-1          3
-1          
-1          4
-1          4
-1          3
8           1
-1          2
-1          2
-1          1

EDIT 2: Output of print(dataset['CLASS'].value_counts()):

import pandas as pd
dataset = pd.read_csv('dataset.csv', dtype={'CLASS': str})
print(dataset['CLASS'].value_counts())

1    48418
2    21124
2    16189
1    12365
3     1716
4      878
3      848
       346
4       81
D       43
Name: CLASS, dtype: int64

EDIT 3: Plotting is not a problem for blank elements, as shown with the following plot with the original data, where the blank point on x-axis is highlighted:

enter image description here

  • 1
    Can you please post some data from the csv (and better not an image of it) – U9-Forward Jun 14 at 6:16
  • what is the dtype of dataset['OCCUP_CLASS'] ? can you share the result of dataset['OCCUP_CLASS'].dtype ? – nimrodz Jun 14 at 6:25
  • @U8-Forward I can't really post some data from the CSV as it is confidential, but I have edited the question to include the first 20 rows of the 2 relevant columns. – Kristada673 Jun 14 at 6:26
  • @Kristada673 I think it is not working because one element is a '' – U9-Forward Jun 14 at 6:28
  • 1
    Just a remark: there is no need to use a Counter, you can get a Series of value counts by using CLASS.value_counts() – Rob Jun 14 at 7:37

Pandas tries to detect the data type of a column, but sometimes fails as you noticed. You can force the data type of a column in read_csv like this:

dataset = pd.read_csv('new_dataset.csv', dtype={'CLASS': str})
  • Well, this also gives this error: ValueError: could not convert string to float: – Kristada673 Jun 14 at 7:37
  • Of course you get an error during plotting, what do you expect to see for strings like " " or "D"? You can plot for example the value_counts instead with CLASS.value_counts().hist(). – Rob Jun 14 at 7:41
  • If you instead want to plot only the numeric values, use something like pd.to_numeric(CLASS, errors='coerce').plot() – Rob Jun 14 at 7:43
  • I have included a third edit in the question details to show that blanks do not cause problem for plotting. – Kristada673 Jun 14 at 7:48
  • You did not make that plot with plt.plot(CLASS), since it is a histogram of the data. Try it with CLASS.hist() or CLASS.value_counts().plot(), my first comment is an error. – Rob Jun 14 at 7:55

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