I am trying to use isolation forest algorithm with Python scikit-learn.

I do not understand why do I have to generate the sets `X_test`

and `X_outliers`

, because, when I get my data, I have no idea if there are outliers or not in it. But maybe this is just an example and I do not have to generate and fill that sets for every case. I thought that isolation forest does not have to receive a clean `X_train`

(with no outliers).

Did I misunderstand the algorithm? Do I have to use an other algorithm (I thought about one-class SVM but its `X_train`

has to be as clean as possible)?

Does the isolation forest algorithm is an unsupervised algorithm or a supervised one (like the random forest algorithm)?