sklearn.ensemble Module
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An sklearn.ensemble Module is an sklearn module that contains a collection of decision tree ensemble learning systems.
- Context:
- It can (often) reference a sklearn.tree system.
sklearn.tree.DTEName(self, arguments)or simplysklearn.tree.DTEName()where DTName is the name of the selected decision tree ensemble learning system.
- It can (often) reference a sklearn.tree system.
- Example(s)
sklearn.ensemble.AdaBoostClassifierAn AdaBoost classifier.sklearn.ensemble.AdaBoostRegressorAn AdaBoost regressor.sklearn.ensemble.BaggingClassifierA Bagging classifier.sklearn.ensemble.BaggingRegressorA Bagging regressor.sklearn.ensemble.ExtraTreesClassifierAn extra-trees classifier.sklearn.ensemble.ExtraTreesRegressorAn extra-trees regressor.sklearn.ensemble.GradientBoostingClassifierGradient Boosting for classification.sklearn.ensemble.GradientBoostingRegressorGradient Boosting for regression.sklearn.ensemble.IsolationForestIsolation Forest Algorithmsklearn.ensemble.RandomForestClassifierA random forest classifier.sklearn.ensemble.RandomForestRegressorA random forest regressor.sklearn.ensemble.RandomTreesEmbeddingA Totally Random Trees Embedding System.sklearn.ensemble.VotingClassifierSoft Voting/Majority Rule classifier for unfitted estimators.
- Counter-Example(s):
- See: DTree System.
References
2017
- (Scikit Learn, 2017) ⇒ http://scikit-learn.org/stable/modules/classes.html#module-sklearn.ensemble Retrieved:2017-10-22
- QUOTE: The sklearn.ensemble module includes ensemble-based methods for classification, regression and anomaly detection.
User guide: See the Ensemble methods section for further details.
ensemble.AdaBoostClassifier([…])An AdaBoost classifier.ensemble.AdaBoostRegressor([base_estimator, …])An AdaBoost regressor.ensemble.BaggingClassifier([base_estimator, …])A Bagging classifier.ensemble.BaggingRegressor([base_estimator, …])A Bagging regressor.ensemble.ExtraTreesClassifier([…])An extra-trees classifier.ensemble.ExtraTreesRegressor([n_estimators, …])An extra-trees regressor.ensemble.GradientBoostingClassifier([loss, …])Gradient Boosting for classification.ensemble.GradientBoostingRegressor([loss, …])Gradient Boosting for regression.ensemble.IsolationForest([n_estimators, …])Isolation Forest Algorithmensemble.RandomForestClassifier([…])A random forest classifier.ensemble.RandomForestRegressor([…])A random forest regressor.ensemble.RandomTreesEmbedding([…])An ensemble of totally random trees.ensemble.VotingClassifier(estimators[, …])Soft Voting/Majority Rule classifier for unfitted estimators.partial dependence
ensemble.partial_dependence.partial_dependence(…), Partial dependence of target_variables.ensemble.partial_dependence.plot_partial_dependence(…), Partial dependence plots for features.
- QUOTE: The sklearn.ensemble module includes ensemble-based methods for classification, regression and anomaly detection.