Notice: This page requires JavaScript to function properly.
Please enable JavaScript in your browser settings or update your browser.
Lära Final Estimator | Section
Machine Learning Foundations with Scikit-Learn

bookFinal Estimator

Svep för att visa menyn

Pipeline was previously used for preprocessing, but its real purpose is to chain preprocessing with a final predictor. The last step in a pipeline can be any estimator (typically a model) that produces predictions.

Note
Note

When calling .fit(), each transformer runs .fit_transform(). When calling .predict(), the pipeline uses .transform() before sending data to the final estimator. This is required because new data must be transformed exactly like the training data.

Why .transform()?

Using .fit_transform() on new data could change encodings (e.g., in OneHotEncoder), creating mismatched columns and unreliable predictions. .transform() guarantees consistent preprocessing, ignoring unseen categories and keeping the same column order.

Here is how one-hot encoded training data looks like:

Here are the new instances to predict:

If .fit_transform() were applied to new instances, the OneHotEncoder could generate columns in a different order or even introduce new ones. This would cause the new data to be transformed inconsistently with the training set, making predictions unreliable.

However, using .transform() ensures that the new data is encoded exactly as the training data, ignoring categories not seen during training:

Adding the Final Estimator

Simply add the model as the last step of the pipeline:

pipe = make_pipeline(
    ct,
    SimpleImputer(strategy='most_frequent'),
    StandardScaler(),
    KNeighborsClassifier()
)
pipe.fit(X, y)
pipe.predict(X_new)

This allows the whole workflow—preprocessing + prediction—to run with one call.

Var allt tydligt?

Hur kan vi förbättra det?

Tack för dina kommentarer!

Avsnitt 1. Kapitel 21

Fråga AI

expand

Fråga AI

ChatGPT

Fråga vad du vill eller prova någon av de föreslagna frågorna för att starta vårt samtal

Avsnitt 1. Kapitel 21
some-alt