This is more of a "theoretical" question. I'm working with the scikit-learn package to perform some NLP task. Sklearn provides many methods to perform both feature selection and setting of a model parameters. I'm wondering what I should do first.
If I use univariate feature selection, it's pretty obvious that I should do feature selection first and, with the selected features, I then tunne the parameters of the estimator.
But what if I want to use recursive feature elimination? Should I first set the parameters with grid search using ALL the original features and just then perform feature selection? Or perhaps I should select the features first (with the estimator's default parameters) and then set the parameters with the selected features?
Thanks in advance for any help you could give me.
I'm having pretty much the same problem stated here. By that time, there wasn't a solution to it. Does anyone know if it exists one now?