101

Suppose I have a dataframe with countries that goes as:

cc | temp
US | 37.0
CA | 12.0
US | 35.0
AU | 20.0

I know that there is a pd.get_dummies function to convert the countries to 'one-hot encodings'. However, I wish to convert them to indices instead such that I will get cc_index = [1,2,1,3] instead.

I'm assuming that there is a faster way than using the get_dummies along with a numpy where clause as shown below:

[np.where(x) for x in df.cc.get_dummies().values]

This is somewhat easier to do in R using 'factors' so I'm hoping pandas has something similar.

3
  • 2
    Do you mean cc_index = [0,1,0,2]? Jun 29 '16 at 1:36
  • 1
    sure, forgot about the python 0 index
    – sachinruk
    Jun 29 '16 at 1:37
  • Categorical Series or columns in a DataFrame may help.
    – min2bro
    Jun 29 '16 at 1:44
178

First, change the type of the column:

df.cc = pd.Categorical(df.cc)

Now the data look similar but are stored categorically. To capture the category codes:

df['code'] = df.cc.cat.codes

Now you have:

   cc  temp  code
0  US  37.0     2
1  CA  12.0     1
2  US  35.0     2
3  AU  20.0     0

If you don't want to modify your DataFrame but simply get the codes:

df.cc.astype('category').cat.codes

Or use the categorical column as an index:

df2 = pd.DataFrame(df.temp)
df2.index = pd.CategoricalIndex(df.cc)
3
  • 6
    The call df.cc.cat.codes seems to have changed to just df.cc.codes? Mar 12 '20 at 8:40
  • 2
    Note that if you have missing values they will be encoded to -1. If you want to avoid treating this case you can cast to string first: df.cc.astype('str').astype('category').cat.codes
    – Guy s
    May 6 '20 at 6:35
  • 1
    It seems transform NaN as -1?
    – ah bon
    Dec 19 '20 at 5:56
34

If you wish only to transform your series into integer identifiers, you can use pd.factorize.

Note this solution, unlike pd.Categorical, will not sort alphabetically. So the first country will be assigned 0. If you wish to start from 1, you can add a constant:

df['code'] = pd.factorize(df['cc'])[0] + 1

print(df)

   cc  temp  code
0  US  37.0     1
1  CA  12.0     2
2  US  35.0     1
3  AU  20.0     3

If you wish to sort alphabetically, specify sort=True:

df['code'] = pd.factorize(df['cc'], sort=True)[0] + 1 
0
21

If you are using the sklearn library you can use LabelEncoder. Like pd.Categorical, input strings are sorted alphabetically before encoding.

from sklearn.preprocessing import LabelEncoder

LE = LabelEncoder()
df['code'] = LE.fit_transform(df['cc'])

print(df)

   cc  temp  code
0  US  37.0     2
1  CA  12.0     1
2  US  35.0     2
3  AU  20.0     0
2

One-line code:

df[['cc']] = df[['cc']].apply(lambda col:pd.Categorical(col).codes)

This works also if you have a list_of_columns:

df[list_of_columns] = df[list_of_columns].apply(lambda col:pd.Categorical(col).codes)

Furthermore, if you want to keep your NaN values you can apply a replace:

df[['cc']] = df[['cc']].apply(lambda col:pd.Categorical(col).codes).replace(-1,np.nan)
1

Try this, convert to number based on frequency (high frequency - high number):

labels = df[col].value_counts(ascending=True).index.tolist()
codes = range(1,len(labels)+1)
df[col].replace(labels,codes,inplace=True)
0

Will change any columns into Numbers. It will not create a new column but just replace the values with numerical data.

def characters_to_numb(*args): for arg in args: df[arg] = pd.Categorical(df[arg]) df[arg] = df[arg].cat.codes return df

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