Nonparametric estimation of natural direct and indirect effects based on inverse probability weighting

Q3 Mathematics
Yu‐Chin Hsu, M. Huber, Tsung-Chih Lai
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引用次数: 11

Abstract

Abstract Using a sequential conditional independence assumption, this paper discusses fully nonparametric estimation of natural direct and indirect causal effects in causal mediation analysis based on inverse probability weighting. We propose estimators of the average indirect effect of a binary treatment, which operates through intermediate variables (or mediators) on the causal path between the treatment and the outcome, as well as the unmediated direct effect. In a first step, treatment propensity scores given the mediator and observed covariates or given covariates alone are estimated by nonparametric series logit estimation. In a second step, they are used to reweigh observations in order to estimate the effects of interest. We establish root-n consistency and asymptotic normality of this approach as well as a weighted version thereof. The latter allows evaluating effects on specific subgroups like the treated, for which we derive the asymptotic properties under estimated propensity scores. We also provide a simulation study and an application to an information intervention about male circumcisions.
基于逆概率加权的自然直接和间接效应的非参数估计
摘要本文利用序列条件独立假设,讨论了基于逆概率加权的因果中介分析中自然直接和间接因果效应的完全非参数估计。我们提出了二元治疗的平均间接效应的估计,它通过中间变量(或中介)在治疗和结果之间的因果路径上运行,以及无中介的直接效应。在第一步,治疗倾向得分给定的中介和观察到的协变量或单独给定的协变量是由非参数序列logit估计估计。在第二步中,它们被用来重新衡量观测值,以估计兴趣的影响。我们建立了这种方法的根n一致性和渐近正态性,并给出了它的一个加权版本。后者允许评估对特定亚群的影响,如治疗,我们推导出估计倾向得分下的渐近性质。我们还提供了一个模拟研究和应用程序,以信息干预有关男性包皮环切。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Econometric Methods
Journal of Econometric Methods Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.20
自引率
0.00%
发文量
7
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