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Normalization time
First, as a newer user I want to complement the nice design and gui you have developed for rapidminer.
I used the normalization operator, using the z-transformation on a data set consisting of 1700 examples and 5000 features (sparse formatted ). The attributes are all integers, stored in the sparse-float-array. The normalization works fine but took a very long time ~ around 20 minutes; the next stage applied learning of an svm which only took a few minutes.
Is there any way to speed up the normalization? I want to apply it to larger data sets in the near future: ~50,000 examples
Thanks,
Bill
I used the normalization operator, using the z-transformation on a data set consisting of 1700 examples and 5000 features (sparse formatted ). The attributes are all integers, stored in the sparse-float-array. The normalization works fine but took a very long time ~ around 20 minutes; the next stage applied learning of an svm which only took a few minutes.
Is there any way to speed up the normalization? I want to apply it to larger data sets in the near future: ~50,000 examples
Thanks,
Bill
0
Answers
It's about the sparse format, the following takes 8 seconds for me ...