evalml.pipelines.RFBinaryClassificationPipeline¶

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class
evalml.pipelines.RFBinaryClassificationPipeline(parameters, random_state=0)[source]¶ Random Forest Pipeline for binary classification
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name= 'Random Forest Binary Classification Pipeline'¶
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custom_name= 'Random Forest Binary Classification Pipeline'¶
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summary= 'Random Forest Classifier w/ One Hot Encoder + Simple Imputer + RF Classifier Select From Model'¶
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component_graph= ['One Hot Encoder', 'Simple Imputer', 'RF Classifier Select From Model', 'Random Forest Classifier']¶
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problem_type= 'binary'¶
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model_family= 'random_forest'¶
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hyperparameters= {'impute_strategy': ['mean', 'median', 'most_frequent'], 'max_depth': Integer(low=1, high=32, prior='uniform', transform='identity'), 'n_estimators': Integer(low=10, high=1000, prior='uniform', transform='identity'), 'percent_features': Real(low=0.01, high=1, prior='uniform', transform='identity'), 'threshold': ['mean', -inf]}¶
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custom_hyperparameters= None¶
Instance attributes
feature_importancesReturn feature importances.
parametersReturns parameter dictionary for this pipeline
thresholdMethods:
Machine learning pipeline made out of transformers and a estimator.
Outputs pipeline details including component parameters
Build a model
Returns component by name
Generate an image representing the pipeline graph
Generate a bar graph of the pipeline’s feature importances
Loads pipeline at file path
Make predictions using selected features.
Make probability estimates for labels.
Saves pipeline at file path
Evaluate model performance on objectives
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