linkedin/TE2Rules
Python library to explain Tree Ensemble models (TE) like XGBoost, using a rule list.
No commits in the last 6 months. Available on PyPI.
Stars
63
Forks
7
Language
Python
License
—
Last pushed
Apr 22, 2024
Monthly downloads
664
Commits (30d)
0
Dependencies
6
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