Below is my pipeline and it seems that I can't pass the parameters to my models by using the ModelTransformer class, which I take it from the link (http://zacstewart.com/2014/08/05/pipelines-of-featureunions-of-pipelines.html)

The error message makes sense to me, but I don't know how to fix this. Any idea how to fix this? Thanks.

# define a pipeline
pipeline = Pipeline([
('vect', DictVectorizer(sparse=False)),
('scale', preprocessing.MinMaxScaler()),
('ess', FeatureUnion(n_jobs=-1, 
     ('rfc', ModelTransformer(RandomForestClassifier(n_jobs=-1, random_state=1,  n_estimators=100))),
     ('svc', ModelTransformer(SVC(random_state=1))),],
('es', EnsembleClassifier1()),

# define the parameters for the pipeline
parameters = {
'ess__rfc__n_estimators': (100, 200),

# ModelTransformer class. It takes it from the link
class ModelTransformer(TransformerMixin):
    def __init__(self, model):
        self.model = model
    def fit(self, *args, **kwargs):
        self.model.fit(*args, **kwargs)
        return self
    def transform(self, X, **transform_params):
        return DataFrame(self.model.predict(X))

grid_search = GridSearchCV(pipeline, parameters, n_jobs=-1, verbose=1, refit=True)

Error Message: ValueError: Invalid parameter n_estimators for estimator ModelTransformer.

  • Thanks for asking--I had the same question. Let me ask you another thing. Do you know why does self.model.fit(*args, **kwargs) work? I mean you don't usually pass hyperparameters like n_estimators when calling the fit method, but when defining the class instance, eg, rfc=RandomForestClassifier(n_estimators=100), rfc.fit(X,y) – drake Apr 24 '16 at 2:59
  • @drake, when you create a ModelTransformer instance, you need to pass in a model with its parameters. For example, ModelTransformer(RandomForestClassifier(n_jobs=-1, random_state=1, n_estimators=100))). And here self.model.fit(*args, **kwargs) mostly means self.model.fit(X, y). – nkhuyu Apr 26 '16 at 3:32
  • Thanks, @nkhuyu. I know that's how it works. I was asking why. Since self.model = model, self.model=RandomForestClassifier(n_jobs=-1, random_state=1, n_estimators=100). I understand *args is unpacking (X, y), but I don't understand WHY one needs **kwargs in the fit method when self.model already knows the hyperparameters. – drake Apr 26 '16 at 16:17

GridSearchCV has a special naming convention for nested objects. In your case ess__rfc__n_estimators stands for ess.rfc.n_estimators, and, according to the definition of the pipeline, it points to the property n_estimators of

ModelTransformer(RandomForestClassifier(n_jobs=-1, random_state=1,  n_estimators=100)))

Obviously, ModelTransformer instances don't have such property.

The fix is easy: in order to access underlying object of ModelTransformer one needs to use model field. So, grid parameters become

parameters = {
  'ess__rfc__model__n_estimators': (100, 200),

P.S. it's not the only problem with your code. In order to use multiple jobs in GridSearchCV, you need to make all objects you're using copy-able. This is achieved by implementing methods get_params and set_params, you can borrow them from BaseEstimator mixin.

| improve this answer | |
  • can you expand on this PS a bit? I think I have the same issue where when I try to use gridsearchcv with pipeline feature union I get the error AttributeError: 'SelectColumns' object has no attribute 'get_params' where SelectColumns is a class I wrote for the pipeline. – B_Miner Jun 5 '15 at 1:43
  • 10
    @B_Miner, you should inherit your SelectColumns class from the BaseEstimator which provides aforementioned set_params and get_params. Alternatively, you can implement your own ones, but most of the time you don't want to. – Artem Sobolev Jun 5 '15 at 1:59
  • 2
    I was looking for BaseEstimatorMixin. I inherited from BaseEstimator and it worked like a charm, thanks! – B_Miner Jun 5 '15 at 2:19
  • @ArtemSobolev I am working on the same kind of thing. I am getting an error "cannot deepcopy this pattern object", when I try to use cross_val_predict or gridsearch CV with same pipeline. Could you please show how you did it with feature union? – Hareendra Chamara Philips Oct 20 '17 at 11:08

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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