| Literature DB >> 27524872 |
Leo L Duan1, John P Clancy2, Rhonda D Szczesniak3.
Abstract
We propose a novel "tree-averaging" model that utilizes the ensemble of classification and regression trees (CART). Each constituent tree is estimated with a subset of similar data. We treat this grouping of subsets as Bayesian Ensemble Trees (BET) and model them as a Dirichlet process. We show that BET determines the optimal number of trees by adapting to the data heterogeneity. Compared with the other ensemble methods, BET requires much fewer trees and shows equivalent prediction accuracy using weighted averaging. Moreover, each tree in BET provides variable selection criterion and interpretation for each subset. We developed an efficient estimating procedure with improved estimation strategies in both CART and mixture models. We demonstrate these advantages of BET with simulations and illustrate the approach with a real-world data example involving regression of lung function measurements obtained from patients with cystic fibrosis. Supplemental materials are available online.Entities:
Keywords: Bayesian Mixture of Trees; Dirichlet Process; Ensemble Approach; Heterogeneity
Year: 2016 PMID: 27524872 PMCID: PMC4980076 DOI: 10.1080/10618600.2015.1089774
Source DB: PubMed Journal: J Comput Graph Stat ISSN: 1061-8600 Impact factor: 2.302