--- library_name: sklearn tags: - sklearn - skops - tabular-classification model_format: pickle model_file: stroke_model.pkl widget: - structuredData: Residence_type_Rural: - true - true - false Residence_type_Urban: - false - false - true age: - 0.15771484375 - 0.7802734375 - 0.31640625 avg_glucose_level: - 0.24563752192779986 - 0.3366263502908319 - 0.04413258240236362 avg_glucose_level/bmi: - 0.35152096177583636 - 0.18922222093200816 - 0.12391183202584002 bmi: - 0.10487444608567206 - 0.35007385524372225 - 0.1920236336779911 ever_married_No: - true - false - true ever_married_Yes: - false - true - false gender_Female: - false - true - false gender_Male: - true - false - true gender_Other: - false - false - false heart_disease_No: - true - true - true heart_disease_Yes: - false - false - false hypertension_No: - true - true - true hypertension_Yes: - false - false - false smoking_status_Unknown: - false - false - false smoking_status_formerly smoked: - false - false - false smoking_status_never smoked: - true - false - false smoking_status_smokes: - false - true - true work_type_Govt_job: - false - false - false work_type_Never_worked: - false - false - false work_type_Private: - false - false - true work_type_Self-employed: - false - true - false work_type_children: - true - false - false --- # Model description The model is intended to be used to predict if a person is likely to get a stroke or not ## Intended uses & limitations [More Information Needed] ## Training Procedure [More Information Needed] ### Hyperparameters
Click to expand | Hyperparameter | Value | |-------------------------|---------------------| | objective | binary:logistic | | base_score | | | booster | | | callbacks | | | colsample_bylevel | 0.9076228511174643 | | colsample_bynode | | | colsample_bytree | 0.8045246933821307 | | device | | | early_stopping_rounds | | | enable_categorical | False | | eval_metric | | | feature_types | | | gamma | | | grow_policy | | | importance_type | | | interaction_constraints | | | learning_rate | 0.0711965541329635 | | max_bin | | | max_cat_threshold | | | max_cat_to_onehot | | | max_delta_step | | | max_depth | | | max_leaves | 4 | | min_child_weight | 0.27994747825685384 | | missing | nan | | monotone_constraints | | | multi_strategy | | | n_estimators | 35 | | n_jobs | | | num_parallel_tree | | | random_state | | | reg_alpha | 0.0009765625 | | reg_lambda | 2.991485993669717 | | sampling_method | | | scale_pos_weight | | | subsample | 0.8073913094722203 | | tree_method | | | validate_parameters | | | verbosity | |
### Model Plot
XGBClassifier(base_score=None, booster=None, callbacks=None,colsample_bylevel=0.9076228511174643, colsample_bynode=None,colsample_bytree=0.8045246933821307, device=None,early_stopping_rounds=None, enable_categorical=False,eval_metric=None, feature_types=None, gamma=None,grow_policy=None, importance_type=None,interaction_constraints=None, learning_rate=0.0711965541329635,max_bin=None, max_cat_threshold=None, max_cat_to_onehot=None,max_delta_step=None, max_depth=None, max_leaves=4,min_child_weight=0.27994747825685384, missing=nan,monotone_constraints=None, multi_strategy=None, n_estimators=35,n_jobs=None, num_parallel_tree=None, random_state=None, ...)
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## Evaluation Results | Metric | Value | |----------|---------| | accuracy | 0.78 | ### Confusion Matrix ![Confusion Matrix](confusion_matrix.png) # How to Get Started with the Model [More Information Needed] # Model Card Authors Alexander Lindström # Model Card Contact You can contact the model card authors through following channels: [More Information Needed] # Citation Below you can find information related to citation. **BibTeX:** ``` [More Information Needed] ``` # precision recall f1-score support class 0 0.98 0.78 0.87 960 class 1 0.18 0.76 0.29 62 accuracy 0.78 1022 macro avg 0.58 0.77 0.58 1022 weighted avg 0.93 0.78 0.83 1022 | Metric | Value | |----------|---------| | accuracy | 0.78 |