How to scale each fold separately in GridSearchCV?

While training an ML model we should normalize (scale) features regarding to the training data. And then use the fitted scaler on the test data. But if using a grid search CV (5 fold) we usually provide it the training data which is already scaled. That then gets separated into folds. But How would we separately scale each of the 4-1 folds?

scl = MinMaxScaler()

# The training data was scaled all together and
# not train and validation separately
cv = GridSearchCV(MODEL, GRID, scoring='f1', cv=5)
cv.fit(X_train, Y_train)

Please let me know if you have a suggestion how to achieve something like this.

  • Why don't you split the training into training and validation sets at first. then scale each set individually – Ziyad Moraished Oct 11 at 12:44
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    @ZiyadMoraished the question is clearly about cross validation, and not a train/validation split – desertnaut Oct 11 at 14:09

This is what Pipelines are for.

Convert your current model to Pipelined model like this:

new_model = Pipeline([('scaler', MinMaxScaler()), ('model', cur_model)])

Do not scale your training set beforehand. Every time fit is called, Pipeline will automatically fit and transform your training data, (only using training data of course) and call transform on test set using fitted MinMaxScaler.

  • Thanks. This is what I was looking for. You mention not to scale my training set as the pipeline will do it and it makes sense. But I think I still need to fit the scaler with my training set so that I can later transform my test set, is that correct? – Dominik Žulovec Sajovic Oct 12 at 10:46
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    Not if you have refit=True in GridSearchCV, which is default. This means GridSearchCV will use entire training set with best found hyperparameter to train a final model, so scaler within Pipeline is automatically fitted. In fact, after cv = GridSearchCV(new_model , GRID, scoring='f1', cv=5).fit(X_train, Y_train) you can simply call cv.predict(X_test) (i.e directly on fitted GridSearchCV) without worrying about scaling or anything else ` – Shihab Shahriar Khan Oct 12 at 14:15
  • This is some ground breaking news :). So let me reiterate if I understand correctly. While the GridSearchCV(pipeline, grid, ...) will be running with my pipeline. And my pipeline will have the preprocessing in place. Then I can use cv.predict(X_test) with not-preprocessed data and sklearn will take care of that? That sounds awesome. Will it work even if I dump the trained pipeline with joblib? and later load it? is the preprocessing from the pipeline still there the dump/load? – Dominik Žulovec Sajovic Oct 13 at 21:48
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    yup, dumping and loading any fitted models or preprocessors is perfectly fine, not just this particular GridSearchCV(pipeline, grid, ...) estimator – Shihab Shahriar Khan Oct 14 at 6:25

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