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Machine Learning Foundations with Scikit-Learn

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The scikit-learn (sklearn) library provides tools for preprocessing and modeling. Its main object types are estimator, transformer, predictor, and model.

Estimator

Any class with .fit() is an estimator — it learns from data.

estimator.fit(X, y)     # supervised  
estimator.fit(X)        # unsupervised

Transformer

A transformer has .fit() and .transform(), plus .fit_transform() to do both at once.

Note
Note

Transformers are usually used to transform the X array. However, as we will see in the example of LabelEncoder, some transformers are made for the y array.

nan values shown in the training set in the picture indicate missing data in Python.

Predictor

A predictor is an estimator with .predict() for generating outputs.

predictor.fit(X, y)
predictor.predict(X_new)

Model

A model is a predictor with .score(), which evaluates performance.

model.fit(X, y)
model.score(X, y)

As mentioned in the previous chapter, accuracy is a metric representing the percentage of correct predictions.

The preprocessing stage involves working with transformers, and we work with predictors (more specifically with models) at the modeling stage.

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