Analysis of Potential Biases and Validity of Studies Using Multiverse Approaches to Assess the Impacts of Government Responses to Epidemics

Jeremy D. Goldhaber-Fiebert
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Abstract

We analyze the methodological approach and validity of interpretation of using national-level time-series regression analyses relating epidemic outcomes to policies that estimate many models involving permutations of analytic choices (i.e., a "multiverse" approach). Specifically, we evaluate the possible biases and pitfalls of interpretation of a multiverse approach to the context of government responses to epidemics using the example of COVID-19 and a recently published peer-reviewed paper by Bendavid and Patel (2024) along with the subsequent commentary that the two authors published discussing and interpreting the implications of their work. While we identify multiple potential errors and sources of biases in how the specific analyses were undertaken that are also relevant for other studies employing similar approaches, our most important finding involves constructing a counterexample showing that causal model specification-agnostic multiverse analyses can be incorrectly used to suggest that no consistent effect can be discovered in data especially in cases where most specifications estimated with the data are far from causally valid. Finally, we suggest an alternative approach involving hypothesis-drive specifications that explicitly account for infectiousness across jurisdictions in the analysis as well as the interconnected ways that policies and behavioral responses may evolve within and across these jurisdictions.
使用多元宇宙方法评估政府应对流行病影响的研究的潜在偏差和有效性分析
我们分析了使用国家级时间序列回归分析将流行病结果与政策联系起来的方法,以及对涉及分析选择排列的许多模型(即 "多元宇宙 "方法)进行解释的有效性。具体来说,我们以 COVID-19 为例,评估了在政府应对流行病的背景下解释多元宇宙方法可能存在的偏差和误区,以及 Bendavid 和 Patel(2024 年)最近发表的经同行评审的论文,以及两位作者随后发表的讨论和解释其工作影响的评论。虽然我们发现了具体分析过程中可能存在的多种错误和偏差,这些错误和偏差也与其他采用类似方法的研究相关,但我们最重要的发现是构建了一个反例,表明因果模型规格不一致的多元宇宙分析可能被错误地用于表明无法在数据中发现一致的效应,尤其是在使用数据估计的大多数规格远非因果有效的情况下。最后,我们提出了另一种方法,即在分析中明确考虑跨辖区的传染性,以及政策和行为反应在这些辖区内和辖区间的演变方式。
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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