Is ensemble learning an example of many instances of a particular classifier, for example Decision Tree Classifier; or is it a mixture of couple of classifiers such as Neural Networks, Decision Tree, SVM and so forth?
I have looked into this wikipedia's description on
Bagging an ensemble learner. It says that:
Bagging leads to "improvements for unstable procedures" (Breiman, 1996), which include, for example, neural nets, classification and regression trees, and subset selection in linear regression (Breiman, 1994).
I am little confused about this description. I also have looked into MATLAB's implementation of ensemble algorithm. For example this one:
load fisheriris ens = fitensemble(meas,species,'AdaBoostM2',100,'Tree')
species are inputs of the
fitensemble function. Here in this example it is using
AdaBoostM2 weak learner of type
Tree and is using
100 of them. How can this simple instance of this function is being addressed to show that ensemble learning is used to combine different classifiers such as
Neural Net, KNN, Naive Bayes together?
Can anybody explain what is ensemble learning actually and what is MATLAB trying to do in its implementation of