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Tree-based models: Decision Tree, Random Forest, Gradient Boosting, and Histogram-based Gradient Boosting.
Structs§
- Decision
Tree Classifier - CART decision tree for classification.
- Decision
Tree Regressor - CART decision tree for regression.
- Feature
Binner - Quantile-based feature binner.
- Gradient
Boosting Classifier - Gradient Boosting for classification (binary + multiclass).
- Gradient
Boosting Regressor - Gradient Boosting for regression.
- Hist
Gradient Boosting Classifier - Histogram-based Gradient Boosting for classification (binary + multiclass).
- Hist
Gradient Boosting Regressor - Histogram-based Gradient Boosting for regression.
- Random
Forest Classifier - Random Forest for classification.
- Random
Forest Regressor - Random Forest for regression (mean of tree predictions).
Enums§
- Hist
Node View - Public view of a HistNode for ONNX export, with bin thresholds converted to raw feature value thresholds.
- MaxFeatures
- Strategy for selecting the number of features per split.
- Regression
Loss - Loss function for gradient boosting regression.
- Split
Criterion - Split quality criterion.
- Tree
Node - A node in the decision tree (recursive representation).