In StatsModels (and other libraries like scikit-learn), we first have to create a model:

model = sm.OLS(y, x)

and then fit it:

results = model.fit()

Why are these two separate steps?


fit() is a method of the class that represents the model. First you create an object from the class (sm.OLS here), and then you call the method fit() from that class.

The class has often times other methods such as score, predict, ...


The main reason why fitis a separate method can be seen from the arguments in fit. We create a specific model only once but we might want to or we might have to call fit several times.

One example are problems in optimization where we need to try out different optimizers or starting values before reaching convergence, or realizing that the model is not appropriate for the data and a regular optimum does not exist.

Another option that is available as fit argument are different cov_types, those are different methods for computing the standard errors of the parameter estimates.

Another reason is that several models have now several fit methods that are not available through the regular fit method. Examples are fit_regularized for penalized estimation and fit_constrained for estimation under linear constraints on parameters. In these models we are not required to call the usual fit method.

More general question: Why does statsmodels use this complex class hierarchy and multitude of methods instead of putting everything in functions?

The main reasons are modularity, code reusability and lazy evaluation.

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