Title of article :
Tree-structured analysis of treatment effects with large observational data
Author/Authors :
Joseph Kang، نويسنده , , Xiaogang Su، نويسنده , , Brian Hitsman، نويسنده , , Kiang Liu&Donald Lloyd-Jones، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Treatment effect in an observational study of relatively large scale can be described as a mixture of effects
among subgroups. In particular, analysis for estimating the treatment effect at the level of an entire sample
potentially involves not only differential effects across subgroups of the entire study cohort, but also
differential propensities – probabilities of receiving treatment given study subjects’ pretreatment history.
Such complex heterogeneity is of great research interest because the analysis of treatment effects can
substantially depend on the hidden data structure for effect sizes and propensities. To uncover the unseen
data structure, we propose a likelihood-based regression tree method which we call marginal tree (MT).
The MT method is aimed at a simultaneous assessment of differential effects and propensity scores so that
both become homogeneous within each terminal node of the resultant tree structure.We assess simulation
performances of the MT method by comparing it with other existing tree methods and illustrate its use
with a simulated data set, where the objective is to assess the effects of dieting behavior on its subsequent
emotional distress among adolescent girls.
Keywords :
observational study , propensity scores , recursive partitioning
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS