Learning schemes are machine learning algorithms that can automatically discover hypotheses from data to use for future predictions. They learn models from training data and apply these models to unlabeled data to predict labels. RapidMiner includes many common learning schemes directly as well as integration with Weka's learning operators. Examples of learning schemes in RapidMiner are AdaBoost, additive regression, agglomerative clustering, bagging, basic rule learner, Bayesian boosting, and CHAID.