I've create a pipeline as follows (using the Keras Scikit-Learn API)

estimators = []
estimators.append(('standardize', StandardScaler()))
estimators.append(('mlp', KerasRegressor(build_fn=baseline_model, nb_epoch=50, batch_size=5, verbose=0)))
pipeline = Pipeline(estimators)

and fit it with


If I predict with pipline.predict(testX), I (believe) I get standardised predictions.

How do I predict on testX so that predictedY it at the same scale as the actual (untouched) testY (i.e. NOT standardised prediction, but instead the actual values)? I see there is an inverse_transform method for Pipeline, however appears to be for only reverting a transformed X.

  • I may be misunderstanding the fit method - I'm now thinking the transforms only occur on the input features X and not Y (hence the fitted model is on non-standardised Y), so the predict method produces non-standardised predictions?
    – andyandy
    Jan 25, 2017 at 9:25

1 Answer 1


Exactly. The StandardScaler() in a pipeline is only mapping the inputs (trainX) of pipeline.fit(trainX,trainY).

So, if you fit your model to approximate trainY and you need it to be standardized as well, you should map your trainY as

scalerY = StandardScaler().fit(trainY)  # fit y scaler
pipeline.fit(trainX, scalerY.transform(trainY))  # fit your pipeline to scaled Y
testY = scalerY.inverse_transform(pipeline.predict(testX))  # predict and rescale

The inverse_transform() function maps its values considering the standard deviation and mean calculated in StandardScaler().fit().

You can always fit your model without scaling Y, as you mentioned, but this can be dangerous depending on your data since it can lead your model to overfit. You have to test it ;)

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