.. _l-SVC-m-cl-linear-zipmap:False-o17: SVC - m-cl - linear - {'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}``. :: SVC(kernel='linear', probability=True, random_state=0) +----------------------------+----------+ | index | 0 | +============================+==========+ | skl_nop | 1 | +----------------------------+----------+ | skl_ncoef | 3 | +----------------------------+----------+ | skl_nlin | 1 | +----------------------------+----------+ | onx_size | 1481 | +----------------------------+----------+ | onx_nnodes | 2 | +----------------------------+----------+ | 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_ | 9 | +----------------------------+----------+ | onx_ai.onnx.ml | 1 | +----------------------------+----------+ | onx_op_Cast | 1 | +----------------------------+----------+ | onx_size_optim | 1481 | +----------------------------+----------+ | onx_nnodes_optim | 2 | +----------------------------+----------+ | onx_ninits_optim | 0 | +----------------------------+----------+ | fit_class_weight_.shape | 3 | +----------------------------+----------+ | fit_classes_.shape | 3 | +----------------------------+----------+ | fit_support_.shape | 32 | +----------------------------+----------+ | fit_support_vectors_.shape | (32, 4) | +----------------------------+----------+ | fit_dual_coef_.shape | (2, 32) | +----------------------------+----------+ | fit_intercept_.shape | 3 | +----------------------------+----------+ | fit_n_iter_.shape | 3 | +----------------------------+----------+ .. 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]; SVM02 [shape=box label="SVM02" fontsize=10]; SVMc [shape=box style="filled,rounded" color=orange label="SVMClassifier\n(SVMc)\nclasslabels_ints=[0 1 2]\ncoefficients=[ 0.03678524 1. ...\nkernel_params=[0.06311981 0. ...\nkernel_type=b'LINEAR'\npost_transform=b'NONE'\nprob_a=[-1.846917 -2.0973501 -...\nprob_b=[-0.07252295 -0.2737648 ...\nrho=[3.425572 4.0338955 9.4846...\nsupport_vectors=[5.008303 3.1...\nvectors_per_class=[ 2 16 14]" fontsize=10]; X -> SVMc; SVMc -> label; SVMc -> SVM02; Cast [shape=box style="filled,rounded" color=orange label="Cast\n(Cast)\nto=1" fontsize=10]; SVM02 -> Cast; Cast -> probabilities; }