6. Ensemble Modeling
Overview
This chapter examines different ways of performing ensemble modeling, along with its benefits and limitations. By the end of the chapter, you will be able to recognize the underfitting and overfitting of data on machine learning models. You will also be able to devise a bagging classifier using decision trees and implement adaptive boosting and gradient boosting models. Finally, you will be able to build a stacked ensemble using a number of classifiers.