I want to build an sklearn
VotingClassifier ensemble out of multiple different models (Decision Tree, SVC, and a Keras Network). All of them need a different kind of data preprocessing, which is why I made a pipeline for each of them.
# Define pipelines # DTC pipeline featuriser = Featuriser() dtc = DecisionTreeClassifier() dtc_pipe = Pipeline([('featuriser',featuriser),('dtc',dtc)]) # SVC pipeline scaler = TimeSeriesScalerMeanVariance(kind='constant') flattener = Flattener() svc = SVC(C = 100, gamma = 0.001, kernel='rbf') svc_pipe = Pipeline([('scaler', scaler),('flattener', flattener), ('svc', svc)]) # Keras pipeline cnn = KerasClassifier(build_fn=get_model()) cnn_pipe = Pipeline([('scaler',scaler),('cnn',cnn)]) # Make an ensemble ensemble = VotingClassifier(estimators=[('dtc', dtc_pipe), ('svc', svc_pipe), ('cnn', cnn_pipe)], voting='hard')
Flattener classes are some custom made transformers that all employ
When I try to
ensemble.fit(X, y) fit the whole ensemble I get the error message:
ValueError: The estimator list should be a classifier.
Which I can understand, as the individual estimators are not specifically classifiers but pipelines. Is there a way to still make it work?