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Bag of Factors

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Bag of Factors allow you to analyze a corpus from its factors.

Features

Feature Extraction

The feature_extraction module mimicks the module https://scikit-learn.org/stable/modules/generated/sklearn.feature_extraction.text with a focus on character-based extraction.

The main differences are:

  • it is slightly faster;
  • the features can be incrementally updated;
  • it is possible to fit only a random sample of factors to reduce space and computation time.

The main entry point for this module is the CountVectorizer class, which mimicks its scikit-learn counterpart (also named CountVectorizer). It is in fact very similar to sklearn's CountVectorizer using char or char_wb analyzer option from that module.

Fuzz

The fuzz module mimicks the fuzzywuzzy-like packages like

The main difference is that the Levenshtein distance is replaced by the Joint Complexity distance. The API is also slightly change to enable new features:

  • The list of possible choices can be pre-trained (fit) to accelerate the computation in the case a stream of queries is sent against the same list of choices.
  • Instead of one single query, a list of queries can be used. Computations will be parallelized.

The main fuzz entry point is the Process class.

Getting Started

Look at examples from the reference section.

Credits

This package was created with Cookiecutter and the francois-durand/package_helper_2 project template.