I have a simple pipeline like this
pl = Pipeline(steps=[("preprocessor", ColumnTransformer(
transformers=[
('num', Pipeline(steps=[('StandardScaler', StandardScaler())]), selector(dtype_exclude="category")),
('cat', Pipeline(steps=[('onehot', OneHotEncoder( sparse = False, handle_unknown='ignore' ))]), selector(dtype_include="category"))])),
('LR', LogisticRegression(max_iter = 1000, intercept_scaling = 1))])
I then call pl.fit on my training data, but when I try to check the onehot encoder to get variable names I keep getting an error message that it hasnt been fitted yet
pl.fit(X_train.drop(['ID'],axis = 1), y_train)
pl.named_steps['preprocessor'].transformers[1][1].named_steps['onehot'].get_feature_names()
>> This OneHotEncoder instance is not fitted yet. Call 'fit' with appropriate arguments before using this estimator.
And checking confirms it has not been fitted. What am I missing?
from sklearn.utils.validation import check_is_fitted
try:
check_is_fitted(pl)
except:
print('not fitted')
>> not fitted
Pipeline
s don't set any attributes at fit time, so they will always failcheck_is_fitted
. As for the rest, see stackoverflow.com/q/58704347/10495893