Choosing an Optimal Method for Causal Decomposition Analysis with Continuous Outcomes: A Review and Simulation Study

IF 2.4 2区 社会学 Q1 SOCIOLOGY
S. Park, Suyeon Kang, Chioun Lee
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引用次数: 0

Abstract

Causal decomposition analysis is among the rapidly growing number of tools for identifying factors (“mediators”) that contribute to disparities in outcomes between social groups. An example of such mediators is college completion, which explains later health disparities between Black women and White men. The goal is to quantify how much a disparity would be reduced (or remain) if we hypothetically intervened to set the mediator distribution equal across social groups. Despite increasing interest in estimating disparity reduction and the disparity that remains, various estimation procedures are not straightforward, and researchers have scant guidance for choosing an optimal method. In this article, the authors evaluate the performance in terms of bias, variance, and coverage of three approaches that use different modeling strategies: (1) regression-based methods that impose restrictive modeling assumptions (e.g., linearity) and (2) weighting-based and (3) imputation-based methods that rely on the observed distribution of variables. The authors find a trade-off between the modeling assumptions required in the method and its performance. In terms of performance, regression-based methods operate best as long as the restrictive assumption of linearity is met. Methods relying on mediator models without imposing any modeling assumptions are sensitive to the ratio of the group-mediator association to the mediator-outcome association. These results highlight the importance of selecting an appropriate estimation procedure considering the data at hand.
具有连续结果的因果分解分析的最优方法选择:综述与仿真研究
因果分解分析是识别导致社会群体之间结果差异的因素(“中介因素”)的工具之一,其数量正在迅速增加。这类中介因素的一个例子是大学毕业程度,这解释了黑人女性和白人男性后来的健康差异。我们的目标是量化,如果我们假设干预,使中介分配在社会群体中相等,那么差距会减少(或保持)多少。尽管人们对视差减少和剩余视差的估计越来越感兴趣,但各种估计程序并不简单,研究人员对选择最优方法缺乏指导。在本文中,作者根据偏差、方差和覆盖范围评估了使用不同建模策略的三种方法的性能:(1)基于回归的方法,施加限制性建模假设(例如,线性);(2)基于权重的方法和(3)基于假设的方法,依赖于观察到的变量分布。作者发现了方法中所需的建模假设与其性能之间的权衡。就性能而言,只要满足线性的限制性假设,基于回归的方法就能运行得最好。依赖中介模型而不施加任何建模假设的方法对群体中介关联与中介结果关联的比率敏感。这些结果突出了考虑到手头的数据选择适当的估计过程的重要性。
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
CiteScore
4.50
自引率
0.00%
发文量
12
期刊介绍: Sociological Methodology is a compendium of new and sometimes controversial advances in social science methodology. Contributions come from diverse areas and have something useful -- and often surprising -- to say about a wide range of topics ranging from legal and ethical issues surrounding data collection to the methodology of theory construction. In short, Sociological Methodology holds something of value -- and an interesting mix of lively controversy, too -- for nearly everyone who participates in the enterprise of sociological research.
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