A computationally fast variable importance test for random forests for high-dimensional data

Volume: 12, Issue: 4, Pages: 885 - 915
Published: Nov 29, 2016
Abstract
Random forests are a commonly used tool for classification and for ranking candidate predictors based on the so-called variable importance measures. These measures attribute scores to the variables reflecting their importance. A drawback of variable importance measures is that there is no natural cutoff that can be used to discriminate between important and non-important variables. Several approaches, for example approaches based on hypothesis...
Paper Details
Title
A computationally fast variable importance test for random forests for high-dimensional data
Published Date
Nov 29, 2016
Volume
12
Issue
4
Pages
885 - 915
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