Variable importance in binary regression trees and forests 论文

2012引用 396
Gene expression and cancer classificationStatistical Methods and InferenceBayesian Modeling and Causal Inference

摘要

Abstract: We characterize and study variable importance (VIMP) and pairwise variable associations in binary regression trees. A key component involves the node mean squared error for a quantity we refer to as a maximal subtree. The theory naturally extends from single trees to ensembles of trees and applies to methods like random forests. This is useful because while importance values from random forests are used to screen variables, for example they are used to filter high throughput genomic data in Bioinformatics,