yobx.sklearn.ensemble.bagging#
- yobx.sklearn.ensemble.bagging.sklearn_bagging_classifier(g: GraphBuilderExtendedProtocol, sts: Dict, outputs: List[str], estimator: BaggingClassifier, X: str, name: str = 'bagging_classifier') str | Tuple[str, str][source]#
Converts a
sklearn.ensemble.BaggingClassifierinto ONNX.Probabilities from all sub-estimators are averaged (soft aggregation) and the winning class is determined by an argmax over the averaged probability vector. Each sub-estimator is applied to the feature subset recorded in
estimators_features_.Graph structure (two sub-estimators as an example):
X ──Gather(cols_0)──[sub-est 0]──► (_, proba_0) (N, C) X ──Gather(cols_1)──[sub-est 1]──► (_, proba_1) (N, C) Unsqueeze(axis=0) ──► proba_0 (1, N, C), proba_1 (1, N, C) Concat(axis=0) ──► stacked (E, N, C) ReduceMean(axis=0) ──► avg_proba (N, C) ArgMax(axis=1) ──Cast──Gather(classes_) ──► label- Parameters:
g – the graph builder to add nodes to
sts – shapes and types defined by scikit-learn
outputs – desired output tensor names; two entries for
(label, probabilities), one entry for label onlyestimator – a fitted
BaggingClassifierX – name of the input tensor
name – prefix used for names of nodes added by this converter
- Returns:
label tensor name, or tuple
(label, probabilities)
- yobx.sklearn.ensemble.bagging.sklearn_bagging_regressor(g: GraphBuilderExtendedProtocol, sts: Dict, outputs: List[str], estimator: BaggingRegressor, X: str, name: str = 'bagging_regressor') str[source]#
Converts a
sklearn.ensemble.BaggingRegressorinto ONNX.Each sub-estimator’s predictions (computed on the feature subset recorded in
estimators_features_) are averaged to produce the final prediction.Graph structure (two sub-estimators as an example):
X ──Gather(cols_0)──[sub-est 0]──► pred_0 (N,) X ──Gather(cols_1)──[sub-est 1]──► pred_1 (N,) Reshape(N,1) ──► pred_0, pred_1 Concat(axis=1) ──► stacked (N, E) ReduceMean(axis=1) ──► predictions (N,)- Parameters:
g – the graph builder to add nodes to
sts – shapes and types defined by scikit-learn
outputs – desired output tensor names (one entry: predictions)
estimator – a fitted
BaggingRegressorX – name of the input tensor
name – prefix used for names of nodes added by this converter
- Returns:
name of the predictions output tensor