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lines changed Original file line number Diff line number Diff line change @@ -210,6 +210,14 @@ In scikit-learn jargon: an [estimator](#estimator) that takes another
210210Generic term that refers to something that can [ learn] ( #train-learn-fit )
211211[ prediction] ( #predict-prediction ) rules from the data.
212212
213+ ### model state
214+
215+ Set of numerical values that an [ estimator] ( #estimator ) learns during training.
216+ They summarize patterns in the data (limited to what the [ estimator] ( #estimator )
217+ can represent), and are stored for later predictions or transformations.
218+ Examples include the slope and intercept in a linear regression; or the
219+ per-feature mean and standard deviation in a standard scaler.
220+
213221### overfitting
214222
215223Overfitting occurs when your [ model] ( #model ) stick too closely to the [ training
@@ -357,8 +365,8 @@ In a more abstract manner, we can represent fitting with the following diagram:
357365
358366![ img] ( https://inria.github.io/scikit-learn-mooc/_images/api_diagram-predictor.fit.svg )
359367
360- The model state are indeed the parameters and the jockey wheels are referring to
361- an optimization algorithm to find the best parameters.
368+ The [ model state] ( #model-state ) are indeed the parameters and the jockey wheels
369+ are referring to an optimization algorithm to find the best parameters.
362370
363371### train set
364372
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