Improving precision through design and analysis in experiments with noncompliance

IF 2.5 2区 社会学 Q1 POLITICAL SCIENCE
Erin Hartman, Melody Huang
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引用次数: 0

Abstract

Even in the best-designed experiment, noncompliance can complicate analysis. While the intent-to-treat effect remains identified, randomization alone no longer identifies the complier average causal effect (CACE). Instrumental variables approaches, which rely on the exclusion restriction, can suffer from high variance, particularly when the experiment has a low compliance rate. We provide a framework which broadens the set of design and analysis techniques political science researchers can use when addressing noncompliance. Building on the growing literature about the advantages of ex-ante design decisions to improve precision, we show blocking on variables related to both compliance and the outcome can greatly improve all the estimators we propose. Drawing on work in statistics, we introduce the principal ignorability assumption and a class of principal score weighting estimators, which can exhibit large gains in precision in low compliance settings. We then combine principal ignorability and blocking with a simple estimation strategy to derive a more efficient estimation strategy for the CACE. In a re-evaluation of a study on the effect of GOTV on turnout, we find that the principal ignorability approaches result in confidence intervals roughly half the size of traditional instrumental variable approaches.
通过对不符合实验的设计和分析,提高实验精度
即使在设计最好的实验中,不合规也会使分析复杂化。虽然治疗意图效应仍然可以确定,但单独随机化不再确定编译平均因果效应(CACE)。依赖于排除限制的工具变量方法可能会受到高方差的影响,特别是当实验的依从率较低时。我们提供了一个框架,拓宽了政治科学研究人员在解决不合规问题时可以使用的设计和分析技术。基于不断增长的关于事前设计决策提高精度的优势的文献,我们展示了对与遵从性和结果相关的变量的阻塞可以极大地改进我们提出的所有估计器。利用统计学中的工作,我们引入了主可忽略性假设和一类主分数加权估计器,它们可以在低遵从性设置中显示出较大的精度增益。然后,我们将主可忽略性和阻塞与一个简单的估计策略结合起来,得出了一个更有效的CACE估计策略。在对GOTV对投票率影响的研究的重新评估中,我们发现主可忽略性方法产生的置信区间大约是传统工具变量方法的一半。
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
8.10
自引率
0.00%
发文量
54
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