| familiar-package | familiar: Fully Automated Machine Learning with Interpretable Analysis of Results |
| as_data_object | Creates a valid data object from input data. |
| as_data_object-method | Creates a valid data object from input data. |
| as_familiar_collection | Conversion to familiarCollection object. |
| as_familiar_collection-method | Conversion to familiarCollection object. |
| as_familiar_data | Conversion to familiarData object. |
| as_familiar_data-method | Conversion to familiarData object. |
| as_familiar_ensemble | Conversion to familiarEnsemble object. |
| as_familiar_ensemble-method | Conversion to familiarEnsemble object. |
| dataObject-class | Data object |
| export_all | Extract and export all data. |
| export_all-method | Extract and export all data. |
| export_auc_data | Extract and export ROC and Precision-Recall curves. |
| export_auc_data-method | Extract and export ROC and Precision-Recall curves. |
| export_calibration_data | Extract and export calibration and goodness-of-fit tests. |
| export_calibration_data-method | Extract and export calibration and goodness-of-fit tests. |
| export_calibration_info | Extract and export calibration information. |
| export_calibration_info-method | Extract and export calibration information. |
| export_confusion_matrix_data | Extract and export confusion matrices. |
| export_confusion_matrix_data-method | Extract and export confusion matrices. |
| export_decision_curve_analysis_data | Extract and export decision curve analysis data. |
| export_decision_curve_analysis_data-method | Extract and export decision curve analysis data. |
| export_feature_expressions | Extract and export feature expressions. |
| export_feature_expressions-method | Extract and export feature expressions. |
| export_feature_similarity | Extract and export mutual correlation between features. |
| export_feature_similarity-method | Extract and export mutual correlation between features. |
| export_fs_vimp | Extract and export feature selection variable importance. |
| export_fs_vimp-method | Extract and export feature selection variable importance. |
| export_hyperparameters | Extract and export model hyperparameters. |
| export_hyperparameters-method | Extract and export model hyperparameters. |
| export_ice_data | Extract and export individual conditional expectation data. |
| export_ice_data-method | Extract and export individual conditional expectation data. |
| export_model_performance | Extract and export metrics for model performance. |
| export_model_performance-method | Extract and export metrics for model performance. |
| export_model_vimp | Extract and export model-based variable importance. |
| export_model_vimp-method | Extract and export model-based variable importance. |
| export_partial_dependence_data | Extract and export partial dependence data. |
| export_partial_dependence_data-method | Extract and export partial dependence data. |
| export_permutation_vimp | Extract and export permutation variable importance. |
| export_permutation_vimp-method | Extract and export permutation variable importance. |
| export_prediction_data | Extract and export predicted values. |
| export_prediction_data-method | Extract and export predicted values. |
| export_risk_stratification_data | Extract and export sample risk group stratification and associated tests. |
| export_risk_stratification_data-method | Extract and export sample risk group stratification and associated tests. |
| export_risk_stratification_info | Extract and export cut-off values for risk group stratification. |
| export_risk_stratification_info-method | Extract and export cut-off values for risk group stratification. |
| export_sample_similarity | Extract and export mutual correlation between features. |
| export_sample_similarity-method | Extract and export mutual correlation between features. |
| export_univariate_analysis_data | Extract and export univariate analysis data of features. |
| export_univariate_analysis_data-method | Extract and export univariate analysis data of features. |
| familiar | familiar: Fully Automated Machine Learning with Interpretable Analysis of Results |
| familiarCollection-class | Collection of familiar data. |
| familiarData-class | Dataset obtained after evaluating models on a dataset. |
| familiarDataElement-class | Data container for evaluation data. |
| familiarEnsemble-class | Ensemble of familiar models. |
| familiarMetric-class | Model performance metric. |
| familiarModel-class | Familiar model. |
| familiarNoveltyDetector-class | Novelty detector. |
| familiarVimpMethod-class | Variable importance method object. |
| featureInfo-class | Feature information object. |
| get_class_names | Get outcome class labels |
| get_class_names-method | Get outcome class labels |
| get_data_set_names | Get current name of datasets |
| get_data_set_names-method | Get current name of datasets |
| get_feature_names | Get current feature labels |
| get_feature_names-method | Get current feature labels |
| get_fs_method_names | Get current feature selection method name labels |
| get_fs_method_names-method | Get current feature selection method name labels |
| get_learner_names | Get current learner name labels |
| get_learner_names-method | Get current learner name labels |
| get_risk_group_names | Get current risk group labels |
| get_risk_group_names-method | Get current risk group labels |
| get_xml_config | Create an empty xml configuration file |
| outcomeInfo-class | Outcome information object. |
| plot_auc_precision_recall_curve | Plot the precision-recall curve. |
| plot_auc_precision_recall_curve-method | Plot the precision-recall curve. |
| plot_auc_roc_curve | Plot the receiver operating characteristic curve. |
| plot_auc_roc_curve-method | Plot the receiver operating characteristic curve. |
| plot_calibration_data | Plot calibration figures. |
| plot_calibration_data-method | Plot calibration figures. |
| plot_confusion_matrix | Plot confusion matrix. |
| plot_confusion_matrix-method | Plot confusion matrix. |
| plot_decision_curve | Plot decision curves. |
| plot_decision_curve-method | Plot decision curves. |
| plot_feature_selection_occurrence | Plot variable importance scores of features during feature selection or after training a model. |
| plot_feature_selection_variable_importance | Plot variable importance scores of features during feature selection or after training a model. |
| plot_feature_similarity | Plot heatmaps for pairwise similarity between features. |
| plot_feature_similarity-method | Plot heatmaps for pairwise similarity between features. |
| plot_ice | Plot individual conditional expectation plots. |
| plot_ice-method | Plot individual conditional expectation plots. |
| plot_kaplan_meier | Plot Kaplan-Meier survival curves. |
| plot_kaplan_meier-method | Plot Kaplan-Meier survival curves. |
| plot_model_performance | Plot model performance. |
| plot_model_performance-method | Plot model performance. |
| plot_model_signature_occurrence | Plot variable importance scores of features during feature selection or after training a model. |
| plot_model_signature_variable_importance | Plot variable importance scores of features during feature selection or after training a model. |
| plot_pd | Plot partial dependence. |
| plot_pd-method | Plot partial dependence. |
| plot_permutation_variable_importance | Plot permutation variable importance. |
| plot_permutation_variable_importance-method | Plot permutation variable importance. |
| plot_sample_clustering | Plot heatmaps for pairwise similarity between features. |
| plot_sample_clustering-method | Plot heatmaps for pairwise similarity between features. |
| plot_univariate_importance | Plot univariate importance. |
| plot_univariate_importance-method | Plot univariate importance. |
| plot_variable_importance | Plot variable importance scores of features during feature selection or after training a model. |
| plot_variable_importance-method | Plot variable importance scores of features during feature selection or after training a model. |
| predict | Model predictions for familiar models and model ensembles |
| predict-method | Model predictions for familiar models and model ensembles |
| set_class_names | Rename outcome classes for plotting and export |
| set_class_names-method | Rename outcome classes for plotting and export |
| set_data_set_names | Name datasets for plotting and export |
| set_data_set_names-method | Name datasets for plotting and export |
| set_feature_names | Rename features for plotting and export |
| set_feature_names-method | Rename features for plotting and export |
| set_fs_method_names | Rename feature selection methods for plotting and export |
| set_fs_method_names-method | Rename feature selection methods for plotting and export |
| set_learner_names | Rename learners for plotting and export |
| set_learner_names-method | Rename learners for plotting and export |
| set_risk_group_names | Rename risk groups for plotting and export |
| set_risk_group_names-method | Rename risk groups for plotting and export |
| summon_familiar | Perform end-to-end machine learning and data analysis |
| update_model_dir_path | Updates model directory path for ensemble objects. |
| update_model_dir_path-method | Updates model directory path for ensemble objects. |
| update_object | Update familiar S4 objects to the most recent version. |
| update_object-method | Update familiar S4 objects to the most recent version. |
| waiver | Create a waiver object |