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TESTed8ddc7289sklearn.feature_selection._variance_threshold.VarianceThreshold
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TESTed8ddc7289sklearn.feature_selection._variance_threshold.VarianceThreshold
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Uploaded 17-10-2024 by
Continuous Integration
sklearn==1.0.2 numpy>=1.14.6 scipy>=1.1.0 joblib>=0.11 threadpoolctl>=2.0.0
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openml-python
python
scikit-learn
sklearn
sklearn_1.0.2
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Feature selector that removes all low-variance features. This feature selection algorithm looks only at the features (X), not the desired outputs (y), and can thus be used for unsupervised learning.
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mean absolute error
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mean class complexity gain
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mean prior absolute error
mean prior class complexity
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