Title
A Debiased MDI Feature Importance Measure for Random Forests.
Abstract
Tree ensembles such as Random Forests have achieved impressive empirical success across a wide variety of applications. To understand how these models make predictions, people routinely turn to feature importance measures calculated from tree ensembles. It has long been known that Mean Decrease Impurity (MDI), one of the most widely used measures of feature importance, incorrectly assigns high importance to noisy features, leading to systematic bias in feature selection. In this paper, we address the feature selection bias of MDI from both theoretical and methodological perspectives. Based on the original definition of MDI by Breiman et al. [3] for a single tree, we derive a tight non-asymptotic bound on the expected bias of MDI importance of noisy features, showing that deep trees have higher (expected) feature selection bias than shallow ones. However, it is not clear how to reduce the bias of MDI using its existing analytical expression. We derive a new analytical expression for MDI, and based on this new expression, we are able to propose a new MDI feature importance measure using out-of-bag samples, called MDI-oob. For both the simulated data and a genomic ChIP dataset, MDI-oob achieves state-of-the-art performance in feature selection from Random Forests for both deep and shallow trees.
Year
Venue
Keywords
2019
ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 32 (NIPS 2019)
random forest,asymptotic bound,systematic bias
Field
DocType
Volume
Computer science,Artificial intelligence,Random forest,Machine learning
Journal
32
ISSN
Citations 
PageRank 
1049-5258
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Xiao Li1222.56
Wang, Yu200.68
Sumanta Basu311.72
Karl Kumbier481.79
Bin Yu51984241.03