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i have a csv file and has v3 column but that column has some 'nan' rows. How can i except the rows.

 dataset = pd.read_csv('mypath') 

    enc = LabelEncoder()
    enc.fit(dataset['v3'])
    print('fitting')
    dataset['v3'] = enc.transform(dataset['v3'])
    print('transforming')
    print(dataset['v3'])
    print('end')

Edit: V3 columns has A,C,B,A,C,D,,,A,S, like that,and i want to convert it to (1,2,3,1,2,4,,,1,7)

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  • Could you show your csv file content? Feb 10, 2016 at 9:08
  • What do you want to to with these rows? Drop them? (dropna) Fill the NaN values? (fillna)
    – joris
    Feb 10, 2016 at 9:09
  • no,i want to this row categorize to numbers.That row has characters. Feb 10, 2016 at 9:12
  • Can you add sample of your data? Maybe 5-6 rows and desired output. Or better Minimal, Complete, and Verifiable example.
    – jezrael
    Feb 10, 2016 at 9:13
  • Do you mean pandas.factorize? Feb 10, 2016 at 9:13

1 Answer 1

14

Mask the nan values by using ~isnull():

mask = ~dataset['v3'].isnull()
dataset['v3'][mask] = enc.fit_transform(dataset['v3'][mask])

Another way is to use the pandas.factorize function, which takes care of the nans automatically (assigns them -1):

dataset['v3'] = dataset['v3'].factorize()[0]
1
  • thanks a lot:) dataset['v3'] = dataset['v3'].factorize()[0] solved my problem Feb 10, 2016 at 10:05

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