How do you call partial_fit() on a scikit-learn classifier wrapped inside a Pipeline()?

I'm trying to build an incrementally trainable text classifier using SGDClassifier like:

from sklearn.linear_model import SGDClassifier
from sklearn.pipeline import Pipeline
from sklearn.feature_extraction.text import HashingVectorizer
from sklearn.feature_extraction.text import TfidfTransformer
from sklearn.multiclass import OneVsRestClassifier

classifier = Pipeline([
    ('vectorizer', HashingVectorizer(ngram_range=(1,4), non_negative=True)),
    ('tfidf', TfidfTransformer()),
    ('clf', OneVsRestClassifier(SGDClassifier())),

but I get an AttributeError trying to call classifier.partial_fit(x,y).

It supports fit(), so I don't see why partial_fit() isn't available. Would it be possible to introspect the pipeline, call the data transformers, and then directly call partial_fit() on my classifier?

  • 1
    Did you eventually come up with a solution for this? – GreenGodot Apr 6 '16 at 13:44

Here is what I'm doing - where 'mapper' and 'clf' are the 2 steps in my Pipeline obj.

def partial_pipe_fit(pipeline_obj, df):
    X = pipeline_obj.named_steps['mapper'].fit_transform(df)
    Y = df['class']

You probably want to keep track of performance as you keep adjusting/updating your classifier - but that is a secondary point

so more specifically - the original pipeline(s) were constructed as follows

to_vect = Pipeline([('vect', CountVectorizer(min_df=2, max_df=.9, ngram_range=(1, 1), max_features = 100)),
                            ('tfidf', TfidfTransformer())])
full_mapper = DataFrameMapper([
            ('norm_text', to_vect),
            ('norm_fname', to_vect), ])

full_pipe = Pipeline([('mapper', full_mapper), ('clf', SGDClassifier(n_iter=15, warm_start=True,
                                                                n_jobs=-1, random_state=self.random_state))])

google DataFrameMapper to learn more about it - but here it just enables a transformation step that plays nice with pandas


Pipeline does not use partial_fit, hence does not expose it. We would probably need a dedicated pipelining scheme for out-of-core computation but that also depends on the capabilities of the previous models.

In particular in this case you would probably want to do several passes over your data, one to fit each stage of the pipeline and then to transform the dataset to fit the next one, except for the first stage which is stateless, hence does not fit parameters from the data.

In the mean time it's probably easier to roll your own wrapper code tailored to your needs.

  • 1
    Can you recommend how I might roll my own? I tried using the pipeline's transform() method, and then extracting the classifier and feeding the transformed data to it's partial_fit(), but I get an error about the tdf vector being undefined. – Cerin Jul 30 '13 at 14:58
  • 3
    Read the source code of the Pipeline class and this example. Then read the documentation for text feature extraction and the hashing trick to make sure you fully understand the issue with stateful feature extraction. The implementation will depend on what problem you are trying to solve. – ogrisel Jul 30 '13 at 15:51
  • In particular if you use stateful transformers as TfidfTransformer you will need to do several passes on your data. – ogrisel Jul 30 '13 at 15:51

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