24

I understand that scaling means centering the mean(mean=0) and making unit variance(variance=1).

But, What is the difference between preprocessing.scale(x)and preprocessing.StandardScalar() in scikit-learn?

2 Answers 2

34

Those are doing exactly the same, but:

  • preprocessing.scale(x) is just a function, which transforms some data
  • preprocessing.StandardScaler() is a class supporting the Transformer API

I would always use the latter, even if i would not need inverse_transform and co. supported by StandardScaler().

Excerpt from the docs:

The function scale provides a quick and easy way to perform this operation on a single array-like dataset

The preprocessing module further provides a utility class StandardScaler that implements the Transformer API to compute the mean and standard deviation on a training set so as to be able to later reapply the same transformation on the testing set. This class is hence suitable for use in the early steps of a sklearn.pipeline.Pipeline

-1

My understanding is that scale will transform data in min-max range of the data, while standardscaler will transform data in range of [-1, 1].

2
  • Please have a look at the already accepted answer. It's a nice explaination. Mar 14, 2018 at 10:13
  • Wrong. They are doing exactly the same!
    – seralouk
    Dec 13, 2021 at 9:56

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.