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')
```

`meas`

and `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 `fitensemble`

function?