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A set of scikit-learn-style transformers for encoding categorical variables into numeric with different techniques. While ordinal, one-hot, and hashing encoders have similar equivalents in the existing scikit-learn version, the transformers in this library all share a few useful properties: - First-class support for pandas dataframes as an input (and optionally as output) - Can explicitly configure which columns in the data are encoded by name or index, or infer non-numeric columns regardless of input type - Can drop any columns with very low variance based on training set optionally - Portability: train a transformer on data, pickle it, reuse it later and get the same thing out. - Full compatibility with sklearn pipelines, input an array-like dataset like any other transformer

Uploaded Mon Mar 31 20:58:54 2025
md5 checksum 425cc748cd1678b6c60841de7f18c91c
arch x86_64
build py310h06a4308_0
depends numpy >=1.14.0,<2.0a0, pandas >=1.0.5, patsy >=0.5.1, python >=3.10,<3.11.0a0, scikit-learn >=0.20.0, scipy >=1.0.0, statsmodels >=0.9.0
license BSD-3-Clause
license_family BSD
md5 425cc748cd1678b6c60841de7f18c91c
name category_encoders
platform linux
sha1 e9fcca0e3dab39c42322c866b6daa5a1c2c268b7
sha256 d5540d98dce0c6c0b31c6f0b7fe32ed03c102c753f2926dfae4a1b17618f6f2f
size 113952
subdir linux-64
timestamp 1702406773630
version 2.6.3