. Classifier learning is a key technique for KDD. Approaches to learning classifier committees, including Boosting, Bagging, Sasc, and SascB, have demonstrated great success in increasing the prediction accuracy of decision trees. Boosting and Bagging create different classifiers by modifying the distribution of the training set. Sasc adopts a different method. It generates committees by stochastic manipulation of the set of attributes considered at each node during tree induction, but keeping the distribution of the training set unchanged. SascB, a combination of Boosting and Sasc, has shown the ability to further increase, on average, the prediction accuracy of decision trees. It has been found that the performance of SascB and Boosting ...