.. _l-HistGradientBoostingClassifier-m-cl-default-zipmap:False-o17: HistGradientBoostingClassifier - m-cl - default - {'zipmap': False} =================================================================== Fitted on a problem type *m-cl* (see :func:`find_suitable_problem `), method `predict_proba` matches output . Model was converted with additional parameter: ``={'zipmap': False}``. :: HistGradientBoostingClassifier(random_state=0) +---------------------------------------+----------+ | index | 0 | +=======================================+==========+ | skl_nop | 1 | +---------------------------------------+----------+ | onx_size | 75584 | +---------------------------------------+----------+ | onx_nnodes | 1 | +---------------------------------------+----------+ | onx_ninits | 0 | +---------------------------------------+----------+ | onx_doc_string | | +---------------------------------------+----------+ | onx_ir_version | 8 | +---------------------------------------+----------+ | onx_domain | ai.onnx | +---------------------------------------+----------+ | onx_model_version | 0 | +---------------------------------------+----------+ | onx_producer_name | skl2onnx | +---------------------------------------+----------+ | onx_producer_version | 1.13.1 | +---------------------------------------+----------+ | onx_ai.onnx.ml | 3 | +---------------------------------------+----------+ | onx_ | 17 | +---------------------------------------+----------+ | onx_size_optim | 75584 | +---------------------------------------+----------+ | onx_nnodes_optim | 1 | +---------------------------------------+----------+ | onx_ninits_optim | 0 | +---------------------------------------+----------+ | fit_classes_.shape | 3 | +---------------------------------------+----------+ | fit_train_score_.shape | 0 | +---------------------------------------+----------+ | fit_validation_score_.shape | 0 | +---------------------------------------+----------+ | fit__predictors.size | 100 | +---------------------------------------+----------+ | fit__predictors.sum|tree_.leave_count | 1143 | +---------------------------------------+----------+ | fit__predictors.max|tree_.max_depth | 4 | +---------------------------------------+----------+ | fit__predictors.sum|tree_.node_count | 1986 | +---------------------------------------+----------+ .. gdot:: digraph{ size=7; ranksep=0.25; nodesep=0.05; orientation=portrait; X [shape=box color=red label="X\nfloat((0, 4))" fontsize=10]; label [shape=box color=green label="label\nint64((0,))" fontsize=10]; probabilities [shape=box color=green label="probabilities\nfloat((0, 3))" fontsize=10]; TreeEnsembleClassifier [shape=box style="filled,rounded" color=orange label="TreeEnsembleClassifier\n(TreeEnsembleClassifier)\nbase_values=[-0.06348389 0.044...\nclass_ids=[0 0 1 ... 2 2 2]\nclass_nodeids=[1 2 2 ... 1 3 4]\nclass_treeids=[ 0 0 1 ... ...\nclass_weights=[ 0.32 -0.1...\nclasslabels_int64s=[0 1 2]\nnodes_falsenodeids=[2 0 0 ... 4...\nnodes_featureids=[2 0 0 ... 2 0...\nnodes_hitrates=[1. 1. 1. ... 1....\nnodes_missing_value_tracks_true=[0 0 0 ......\nnodes_modes=[b'BRANCH_LEQ' b'LE...\nnodes_nodeids=[0 1 2 ... 2 3 4]\nnodes_treeids=[ 0 0 0 ... ...\nnodes_truenodeids=[1 0 0 ... 3 ...\nnodes_values=[2.548984 0. ...\npost_transform=b'SOFTMAX'" fontsize=10]; X -> TreeEnsembleClassifier; TreeEnsembleClassifier -> label; TreeEnsembleClassifier -> probabilities; }