articleBMC BioinformaticsJul 11, 2008GOLD OA

Conditional variable importance for random forests

Ludwig-Maximilians-Universität München · Sylvia Lawry Centre for Multiple Sclerosis Research · +1 more institution

PubMed
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Abstract

Background

Random forests are becoming increasingly popular in many scientific fields because they can cope with "small n large p" problems, complex interactions and even highly correlated predictor variables. Their variable importance measures have recently been suggested as screening tools for, e.g., gene expression studies. However, these variable importance measures show a bias towards correlated predictor variables.

Results

We identify two mechanisms responsible for this finding: (i) A preference for the selection of correlated predictors in the tree building process and (ii) an additional advantage for correlated predictor variables induced by the unconditional permutation scheme that is employed in the computation of the variable importance measure. Based on these considerations we develop a new, conditional permutation scheme for the computation of the variable importance measure.

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Funding