19

I have a pandas dataframe and I'm trying to change the values in a given column which are represented by strings into integers. For instance:

df = index    fruit   quantity   price 
         0    apple          5    0.99
         1    apple          2    0.99
         2   orange          4    0.89
         4   banana          1    1.64
       ...
     10023     kiwi         10    0.92

I would like it to look at:

df = index    fruit   quantity   price 
         0        1          5    0.99
         1        1          2    0.99
         2        2          4    0.89
         4        3          1    1.64
       ...
     10023        5         10    0.92

I can do this using

df["fruit"] = df["fruit"].map({"apple": 1, "orange": 2,...})

which works if I have a small list to change, but I'm looking at a column with over 500 different labels. Is there any way of changing this from a string to a an int?

3 Answers 3

26

You can use sklearn.preprocessing

from sklearn import preprocessing

le = preprocessing.LabelEncoder()
le.fit(df.fruit)
df['categorical_label'] = le.transform(df.fruit)

Transform labels back to original encoding.

le.inverse_transform(df['categorical_label'])
16

Use factorize and then convert to categorical if necessary:

df.fruit = pd.factorize(df.fruit)[0]
print (df)
   fruit  quantity  price
0      0         5   0.99
1      0         2   0.99
2      1         4   0.89
3      2         1   1.64
4      3        10   0.92

df.fruit = pd.Categorical(pd.factorize(df.fruit)[0])
print (df)
  fruit  quantity  price
0     0         5   0.99
1     0         2   0.99
2     1         4   0.89
3     2         1   1.64
4     3        10   0.92

print (df.dtypes)
fruit       category
quantity       int64
price        float64
dtype: object

Also if need count from 1:

df.fruit = pd.Categorical(pd.factorize(df.fruit)[0] + 1)
print (df)
  fruit  quantity  price
0     1         5   0.99
1     1         2   0.99
2     2         4   0.89
3     3         1   1.64
4     4        10   0.92
3
  • 4
    categoricals by definition factorize; no reason to do it directly
    – Jeff
    Feb 18, 2017 at 22:23
  • @Jeff - I dont understand - do you think output of factorize is category by design? print (type(pd.factorize(pd.Series(['apple','apple','orange', 'banana']))[0])) return numpy array and docs (last Note) describe how to cast to categorical - it seems after factorize. Or something missing? Thanks.
    – jezrael
    Feb 19, 2017 at 5:44
  • you don't need to factorize at all, just cast to category and use the codes ; these are the factorization: directly using factorize is not necessary
    – Jeff
    Feb 19, 2017 at 12:33
8

you can use factorize method:

In [13]: df['fruit'] = pd.factorize(df['fruit'])[0].astype(np.uint16)

In [14]: df
Out[14]:
   index  fruit  quantity  price
0      0      0         5   0.99
1      1      0         2   0.99
2      2      1         4   0.89
3      4      2         1   1.64
4  10023      3        10   0.92

In [15]: df.dtypes
Out[15]:
index         int64
fruit        uint16
quantity      int64
price       float64
dtype: object

alternatively you can do it this way:

In [21]: df['fruit'] = df.fruit.astype('category').cat.codes

In [22]: df
Out[22]:
   index  fruit  quantity  price
0      0      0         5   0.99
1      1      0         2   0.99
2      2      3         4   0.89
3      4      1         1   1.64
4  10023      2        10   0.92

In [23]: df.dtypes
Out[23]:
index         int64
fruit          int8
quantity      int64
price       float64
dtype: object

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.