There are several posts about how to encode categorical data to Sklearn Decision trees, but from Sklearn documentation, we got these
Some advantages of d
(This is just a reformat of my comment above from 2016...it still holds true.)
The accepted answer for this question is misleading.
As it stands, sklearn decision trees do not handle categorical data - see issue #5442.
The recommended approach of using Label Encoding converts to integers which the DecisionTreeClassifier()
will treat as numeric. If your categorical data is not ordinal, this is not good - you'll end up with splits that do not make sense.
Using a OneHotEncoder
is the only current valid way, allowing arbitrary splits not dependent on the label ordering, but is computationally expensive.
(..)
Able to handle both numerical and categorical data.
This only means that you can use
In any case you need to one-hot encode categorical variables before you fit a tree with sklearn, like so:
import pandas as pd
from sklearn.tree import DecisionTreeClassifier
data = pd.DataFrame()
data['A'] = ['a','a','b','a']
data['B'] = ['b','b','a','b']
data['C'] = [0, 0, 1, 0]
data['Class'] = ['n','n','y','n']
tree = DecisionTreeClassifier()
one_hot_data = pd.get_dummies(data[['A','B','C']],drop_first=True)
tree.fit(one_hot_data, data['Class'])
For nominal categorical variables, I would not use LabelEncoder
but sklearn.preprocessing.OneHotEncoder
or pandas.get_dummies
instead because there is usually no order in these type of variables.
Sklearn Decision Trees do not handle conversion of categorical strings to numbers. I suggest you find a function in Sklearn (maybe this) that does so or manually write some code like:
def cat2int(column):
vals = list(set(column))
for i, string in enumerate(column):
column[i] = vals.index(string)
return column
Contrary to the accepted answer, I would prefer to use tools provided by Scikit-Learn for this purpose. The main reason for doing so is that they can be easily integrated in a Pipeline.
Scikit-Learn itself provides very good classes to handle categorical data. Instead of writing your custom function, you should use LabelEncoder which is specially designed for this purpose.
Refer to the following code from the documentation:
from sklearn import preprocessing
le = preprocessing.LabelEncoder()
le.fit(["paris", "paris", "tokyo", "amsterdam"])
le.transform(["tokyo", "tokyo", "paris"])
This automatically encodes them into numbers for your machine learning algorithms. Now this also supports going back to strings from integers. You can do this by simply calling inverse_transform
as follows:
list(le.inverse_transform([2, 2, 1]))
This would return ['tokyo', 'tokyo', 'paris']
.
Also note that for many other classifiers, apart from decision trees, such as logistic regression or SVM, you would like to encode your categorical variables using One-Hot encoding. Scikit-learn supports this as well through the OneHotEncoder class.
Hope this helps!