6

I have a table where each row can belong to multiple categories such as,

test = pd.DataFrame({
            'name': ['a', 'b'],
            'category': [['cat1', 'cat2'],['cat1', 'cat3']]
    })

How can I convert each category to a dummy variable in such a way that the above table becomes,

test_res = pd.DataFrame({
        'name': ['a', 'b'],
        'cat1': [1, 1],
        'cat2': [1, 0],
        'cat3': [0, 1]
    })

I tried pd.get_dummies(test['category']) but get the following error,

TypeError: unhashable type: 'list'

2 Answers 2

11

You can use pandas.get_dummies, but first convert list column to new DataFrame:

print (pd.DataFrame(test.category.values.tolist()))
      0     1
0  cat1  cat2
1  cat1  cat3

print (pd.get_dummies(pd.DataFrame(test.category.values.tolist()), prefix_sep='', prefix=''))
   cat1  cat2  cat3
0     1     1     0
1     1     0     1

Last add column name by concat:

print (pd.concat([pd.get_dummies(pd.DataFrame(test.category.values.tolist()),
                                 prefix_sep='', prefix='' ), 
        test[['name']]], axis=1))
   cat1  cat2  cat3 name
0     1     1     0    a
1     1     0     1    b

Another solution with Series.str.get_dummies:

print (test.category.astype(str).str.strip('[]'))
0    'cat1', 'cat2'
1    'cat1', 'cat3'
Name: category, dtype: object

df = test.category.astype(str).str.strip('[]').str.get_dummies(', ')
df.columns = df.columns.str.strip("'")
print (df)
   cat1  cat2  cat3
0     1     1     0
1     1     0     1

print (pd.concat([df, test[['name']]], axis=1))
   cat1  cat2  cat3 name
0     1     1     0    a
1     1     0     1    b
0
0

With string categories, you can also combine the str.get_dummies that jezrael suggested with str.join to save a little more code:

test.category.str.join('|').str.get_dummies()

str.get_dummies uses | as the default separator, hence its use with str.join.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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