Gradient Boosting Trees based Feature Weightage

Created: 2020-06-30 09:38:33      Last updated: 2020-06-30 09:51:30

Features can be assigned weightage through the gradient boosting trees model. In this regard, RapidMiner's Auto Model comes quite handy. 

Divide the original data into training and testing datasets before applying the workflow to it. 

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