Learning with ensembles Implementing a simple majority vote classifier Combining different algorithms for classification with majority vote Evaluating and tuning the ensemble classifier Bagging – building an ensemble of classifiers from bootstrap samples Leveraging weak learners via adaptive boosting Summary