scikit-learn
https://github.com/scikit-learn/scikit-learn
Python
scikit-learn: machine learning in Python
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Help out
- Issues
- Add MSLE(Mean Squared Logarithmic Error) to TreeRegressors
- github action to build the doc on the master branch once per week and open a new github issue whenever any new FeatureWarning / DeprecationWarning is introduced
- Factory-style construction of composite estimators
- In PassiveAggressiveClassifier, inconsistency between the parameter "loss" and the attribute "loss_function_"
- TfidfVectorizer ngrams does not work when vocabulary provided
- Meanshift alternate implementation issue16171
- MeanShift predict method is incorrect
- Use np.empty_like in PolynomialFeatures for NEP18 support
- Add crossentropy (or weighted classification loss) for SGDClassifier
- Using `cross_val_predict` with `RepeatedKFold`
- Docs
- Python not yet supported