RE-EM tree is a tree-based method that combines the regression tree and the linear mixed effects model for modeling univariate response longitudinal or clustered data. In this paper, we generalize the RE-EM tree method to multivariate response data, by adopting the Multivariate Regression Tree method proposed by De'Ath [2002]. The Multivariate RE-EM tree method estimates a population-level single tree structure that is driven by the multiple responses simultaneously and object-level random effects for each response variable, where correlation between the response variables and between the associated random effects are each allowed. Through simulation studies, we verify the advantage of the Multivariate RE-EM tree over the use of multiple univariate RE-EM trees and the Multivariate Regression Tree. We apply the Multivariate RE-EM tree to analyze a real data set that contains multidimensional nonfinancial characteristics of poverty of different countries as responses, and various potential causes of poverty as predictors.
翻译:RE-EM树是一种以树为基础的方法,它将回归树和线性混合效应模型结合起来,用于模拟单向反应纵向或组合数据。在本文中,我们通过采用De'Ath [2002] 提议的多变量递减树方法,将RE-EM树方法推广为多变量反应数据。多变量RE-EM树方法估计了由多重反应同时驱动的人口级单一树结构,每个响应变量的单个结果和对象级随机效应都允许反应变量与相关随机效应之间的相互关系。通过模拟研究,我们核实了多变量RE-EM树在使用多个单向反应树和多变量递减树方面的优势。我们应用多变量RE-EM树来分析真实数据集,该数据集包含不同国家贫穷的多层面非财务特征,以及作为预测因素的各种潜在贫困原因。