I am using the sklearn 0.14 module in Python to create a decision tree. I was hoping to use the OneHotEncoder to convert some features into categorical features. According to the documentation, I should be able to provide an array of indices to indicate which features should be converted. However, trying the following code:
xs = [[64, 15230], [3, 67673], [16, 43678]] encoder = preprocessing.OneHotEncoder(n_values='auto', categorical_features=, dtype=numpy.integer) encoder.fit(xs)
I receive the following error:
Traceback (most recent call last): File "C:\Users\sara\Documents\Shipping Project\PythonSandbox\CarrierDecisionTree.py", line 35, in <module> encoder.fit(xs) File "C:\Python27\lib\site-packages\sklearn\preprocessing\data.py", line 892, in fit self.fit_transform(X) File "C:\Python27\lib\site-packages\sklearn\preprocessing\data.py", line 944, in fit_transform self.categorical_features, copy=True) File "C:\Python27\lib\site-packages\sklearn\preprocessing\data.py", line 795, in _transform_selected return sparse.hstack((X_sel, X_not_sel)) File "C:\Python27\lib\site-packages\scipy\sparse\construct.py", line 417, in hstack return bmat([blocks], format=format, dtype=dtype) File "C:\Python27\lib\site-packages\scipy\sparse\construct.py", line 532, in bmat dtype = upcast( *tuple([A.dtype for A in blocks[block_mask]]) ) File "C:\Python27\lib\site-packages\scipy\sparse\sputils.py", line 53, in upcast raise TypeError('no supported conversion for types: %r' % (args,)) TypeError: no supported conversion for types: (dtype('int32'), dtype('S6'))
If instead, I provide the array [0, 1] to categorical_features, it works correctly and converts both features properly. The same correct behavior occurs with using 'all' to categorical_features. However, I only want the second feature converted and not the first. I understand I could do this manually by converting one feature at a time, but I was hoping to use all the beauty of OneHotEncoder as I will be using many more features later on.