随机实验评估中处理差异磨损方法的性能比较。

IF 3 4区 社会学 Q1 SOCIAL SCIENCES, INTERDISCIPLINARY
Kaitlin Anderson, Gema Zamarro, Jennifer Steele, Trey Miller
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引用次数: 1

摘要

背景:在随机对照试验中,减员率通常因治疗状态不同而不同,从而影响因果推断。反概率加权方法和治疗效果界的估计已被用来调整这种偏差。目的:我们比较了两个样本中各种方法的性能,这两个样本都是通过基于彩票的随机化生成的:一个具有相当大的差异损耗,一个具有较少问题损耗的增强数据集。研究设计:我们在有问题的磨损数据集中评估各种校正方法的性能。此外,我们还进行了仿真分析。结果:在问题较多的数据集中,我们发现校正方法通常表现不佳。仿真分析表明,对边界方法的基本假设的偏离会损害估计边界的性能。结论:我们建议尽可能对减员校正方法中的基本假设进行验证,当无法验证时,谨慎使用这些方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Performance of Methods to Deal With Differential Attrition in Randomized Experimental Evaluations.

Background: In randomized controlled trials, attrition rates often differ by treatment status, jeopardizing causal inference. Inverse probability weighting methods and estimation of treatment effect bounds have been used to adjust for this bias. Objectives: We compare the performance of various methods within two samples, both generated through lottery-based randomization: one with considerable differential attrition and an augmented dataset with less problematic attrition. Research Design: We assess the performance of various correction methods within the dataset with problematic attrition. In addition, we conduct simulation analyses. Results: Within the more problematic dataset, we find the correction methods often performed poorly. Simulation analyses indicate that deviations from the underlying assumptions for bounding approaches damage the performance of estimated bounds. Conclusions: We recommend the verification of the underlying assumptions in attrition correction methods whenever possible and, when verification is not possible, using these methods with caution.

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来源期刊
Evaluation Review
Evaluation Review SOCIAL SCIENCES, INTERDISCIPLINARY-
CiteScore
2.90
自引率
11.10%
发文量
80
期刊介绍: Evaluation Review is the forum for researchers, planners, and policy makers engaged in the development, implementation, and utilization of studies aimed at the betterment of the human condition. The Editors invite submission of papers reporting the findings of evaluation studies in such fields as child development, health, education, income security, manpower, mental health, criminal justice, and the physical and social environments. In addition, Evaluation Review will contain articles on methodological developments, discussions of the state of the art, and commentaries on issues related to the application of research results. Special features will include periodic review essays, "research briefs", and "craft reports".
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