I'm really new in this whole machine learning thing and I'm taking an online course on this subject. In this course, the instructors showed the following piece of code:
imputer = Inputer(missing_values = 'Nan', strategy = 'mean', axis=0) imputer = Imputer.fit(X[:, 1:3]) X[:, 1:3] = imputer.transform(X[:, 1:3])
I don't really get why this imputer object needs to
fit. I mean, I´m just trying to get rid of missing values in my columns by replacing them with the column mean. From the little I know about programming, this is a pretty simple, iterative procedure, and wouldn´t require a model that has to train on data to be accomplished.
Can someone please explain how this imputer thing works and why it requires training to replace some missing values by the column mean? I have read sci-kit's documentation, but it just shows how to use the methods, and not why they´re required.