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Applying Normalization Parameters of Training Set to Test Set
before training a Neural Network the training set has to be normalized, e.g. with z-score.
Before validating the model, one would also normalize the test set by using the normalization parameters obtained from the normalization of the training set. This is done to prevent information leakage through normalization.
In SKlearn this can be done by fitting a scaler on the training set (scaler_A.fit(training_data)) and normalizing the test set using the same scaler (scaler_A.transform(test_data))
How can this be achieved with the normalization block in RapidMiner?