Applies Multiclass AdaBoost.M1, SAMME and Bagging
Applies Multiclass AdaBoost.M1, SAMME and Bagging
Internal adabag
functions
Builds automatically a pruned tree of class rpart
Runs v-fold cross validation with Bagging
Applies the Bagging algorithm to a data set
Runs v-fold cross validation with AdaBoost.M1 or SAMME
Applies the AdaBoost.M1 and SAMME algorithms to a data set
Ensemble methods for ranking data: Item-Weighted Boosting and Bagging ...
Shows the error evolution of the ensemble
Calculate the error evolution and final predictions of an item-weighte...
Plots the variables relative importance
MarginOrderedPruning.Bagging
Calculates the margins
Plots the error evolution of the ensemble
Plots the margins of the ensemble
Predicts from a fitted bagging object
Predicts from a fitted boosting object
Prepare Ranking Data for Item-Weighted Ensemble Algorithm
It implements Freund and Schapire's Adaboost.M1 algorithm and Breiman's Bagging algorithm using classification trees as individual classifiers. Once these classifiers have been trained, they can be used to predict on new data. Also, cross validation estimation of the error can be done. Since version 2.0 the function margins() is available to calculate the margins for these classifiers. Also a higher flexibility is achieved giving access to the rpart.control() argument of 'rpart'. Four important new features were introduced on version 3.0, AdaBoost-SAMME (Zhu et al., 2009) is implemented and a new function errorevol() shows the error of the ensembles as a function of the number of iterations. In addition, the ensembles can be pruned using the option 'newmfinal' in the predict.bagging() and predict.boosting() functions and the posterior probability of each class for observations can be obtained. Version 3.1 modifies the relative importance measure to take into account the gain of the Gini index given by a variable in each tree and the weights of these trees. Version 4.0 includes the margin-based ordered aggregation for Bagging pruning (Guo and Boukir, 2013) and a function to auto prune the 'rpart' tree. Moreover, three new plots are also available importanceplot(), plot.errorevol() and plot.margins(). Version 4.1 allows to predict on unlabeled data. Version 4.2 includes the parallel computation option for some of the functions. Version 5.0 includes the Boosting and Bagging algorithms for label ranking (Albano, Sciandra and Plaia, 2023).