Affiliation:
1. Cornell University, Ithaca, New York
Abstract
We propose a modification that corrects for split-improvement variable importance measures in Random Forests and other tree-based methods. These methods have been shown to be biased towards increasing the importance of features with more potential splits. We show that by appropriately incorporating split-improvement as measured on out of sample data, this bias can be corrected yielding better summaries and screening tools.
Funder
CCF Division of Computing and Communication Foundations
Division Of Environmental Biology
Division of Mathematical Sciences
Publisher
Association for Computing Machinery (ACM)
Cited by
37 articles.
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