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[marisa_trie]marisa_count_vectorizer for sklearn #sklearn #trie
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| import numpy as np | |
| import marisa_trie | |
| from sklearn.feature_extraction.text import CountVectorizer | |
| from sklearn.externals import six | |
| class MarisaCountVectorizer(CountVectorizer): | |
| # ``CountVectorizer.fit`` method calls ``fit_transform`` so | |
| # ``fit`` is not provided | |
| def fit_transform(self, raw_documents, y=None): | |
| X = super(MarisaCountVectorizer, self).fit_transform(raw_documents) | |
| X = self._freeze_vocabulary(X) | |
| return X | |
| def _freeze_vocabulary(self, X=None): | |
| if not self.fixed_vocabulary_: | |
| frozen = marisa_trie.Trie(six.iterkeys(self.vocabulary_)) | |
| if X is not None: | |
| X = self._reorder_features(X, self.vocabulary_, frozen) | |
| self.vocabulary_ = frozen | |
| self.fixed_vocabulary_ = True | |
| del self.stop_words_ | |
| return X | |
| def _reorder_features(self, X, old_vocabulary, new_vocabulary): | |
| map_index = np.empty(len(old_vocabulary), dtype=np.int32) | |
| for term, new_val in six.iteritems(new_vocabulary): | |
| map_index[new_val] = old_vocabulary[term] | |
| return X[:, map_index] |
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