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Machine Learning Solutions
book

Machine Learning Solutions

by Jalaj Thanaki
April 2018
Beginner to intermediate content levelBeginner to intermediate
566 pages
12h 17m
English
Packt Publishing
Content preview from Machine Learning Solutions

Best approach

As mentioned in the previous section, in this iteration, we will focus on feature transformation as well as implementing a voting classifier that will use the AdaBoost and GradientBoosting classifiers. Hopefully, by using this approach, we will get the best ROC-AUC score on the validation dataset as well as the real testing dataset. This is the best possible approach in order to generate the best result. If you have any creative solutions, you can also try them as well. Now we will jump to the implementation part.

Implementing the best approach

Here, we will implement the following techniques:

  • Log transformation of features
  • Voting-based ensemble model

Let's implement feature transformation first.

Log transformation of features

We will ...

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Publisher Resources

ISBN: 9781788390040Supplemental Content