2

Is it a good idea to perform features scaling and mean normalization on a sparse matrix? I have a matrix that is 70% sparse. Usually, features scaling and mean normalization improve the algorithm performance, but in the case of a sparse matrix, it adds a lot of non zero terms

2
  • There can't be any definitive answer on such question. Just try it in your case an see if it's faster... – hivert Feb 19 '14 at 9:04
  • 1
    @hivert "performance" means accuracy, not speed. Of course it's not faster. The question was how to make the tradeoff worthwhile. – Sean Owen Feb 19 '14 at 9:28
2

If it's important that the representation be sparse, in order to fit into memory for example, then you can't mean-normalize in the representation itself, no. It becomes completely dense and defeats the purpose.

Usually you push around the mean normalization math into another part of the formula or computation. Or you can just do the normalization as you access the elements, having previously computed the mean and variance.

Or you can pick an algorithm that doesn't need normalization, if possible.

0

If using scikit-learn you can just as below:

from sklearn.preprocessing import StandardScaler

scaler = StandardScaler(with_mean=False)
scaler.fit(data)

Where you zero the mean to maintain sparsity as you can see on documentation here.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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