Feature selection via regularized trees

Published: Jun 1, 2012
Abstract
We propose a tree regularization framework, which enables many tree models to perform feature selection efficiently. The key idea of the regularization framework is to penalize selecting a new feature for splitting when its gain (e.g. information gain) is similar to the features used in previous splits. The regularization framework is applied on random forest and boosted trees here, and can be easily applied to other tree models. Experimental...
Paper Details
Title
Feature selection via regularized trees
Published Date
Jun 1, 2012
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