Abstract

BackgroundEstimating heterogeneous treatment effect is a fundamental problem in biological and medical applications. Recently, several recursive partitioning methods have been proposed to identify the subgroups that respond differently towards a treatment, and they rely on a fitness criterion to minimize the error between the estimated treatment effects and the unobservable ground truths.ResultsIn this paper, we propose that a heterogeneity criterion, which maximizes the differences of treatment effects among the subgroups, also needs to be considered. Moreover, we show that better performances can be achieved when the fitness and the heterogeneous criteria are considered simultaneously. Selecting the optimal splitting points then becomes a multi-objective problem; however, a solution that achieves optimal in both aspects are often not available. To solve this problem, we propose a multi-objective splitting procedure to balance both criteria. The proposed procedure is computationally efficient and fits naturally into the existing recursive partitioning framework. Experimental results show that the proposed multi-objective approach performs consistently better than existing ones.ConclusionHeterogeneity should be considered with fitness in heterogeneous treatment effect estimation, and the proposed multi-objective splitting procedure achieves the best performance by balancing both criteria.

Highlights

  • Estimating heterogeneous treatment effect is a fundamental problem in biological and medical applications

  • We propose that a heterogeneity criterion, which maximizes the differences in treatment effects of the child nodes, needs to be considered for recursive partitioning

  • Results we compare the performances of different splitting criteria in the recursive partitioning treatment effect estimation methods: Regression Tree (RT) [5], Transformed Outcome Tree (TOT) [6], Causal Tree (CT) [7], T-Statistic Tree (TS) [8], the proposed Maximizing Heterogeneity criterion (MH) and Multi-Objective criterion (MO)

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Summary

Introduction

Estimating heterogeneous treatment effect is a fundamental problem in biological and medical applications. Treatment effect estimation is a fundamental problem in scientific research. Understanding the heterogeneity of treatment effects are important for many applications. Tree-based recursive partitioning methods [5], originally proposed for regression and classification, are perfect candidates for modeling treatment effect heterogeneity. Unlike methods which have strong predictive power but are difficult to interpret, tree-based methods often excel on both frontiers. Their output, tree models, can be interpreted by human experts, which is of an important consideration in both biological and medical applications

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