John R. Busenbark, K. Frank, Spiro Maroulis, R. Xu, Qinyun Lin
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{"title":"Quantifying the robustness of empirical inferences in strategic management: The impact threshold of a confounding variable and robustness of inference to replacement","authors":"John R. Busenbark, K. Frank, Spiro Maroulis, R. Xu, Qinyun Lin","doi":"10.1108/S1479-838720210000013010","DOIUrl":null,"url":null,"abstract":"In this chapter, we explicate two related techniques that help quantify the sensitivity of a given causal inference to potential omitted variables and/or other sources of unexplained heterogeneity. In particular, we describe the Impact Threshold of a Confounding Variable (ITCV) and the Robustness of Inference to Replacement (RIR). The ITCV describes the minimum correlation necessary between an omitted variable and the focal parameters of a study to have created a spurious or invalid statistical inference. The RIR is a technique that quantifies the percentage of observations with nonzero effects in a sample that would need to be replaced with zero effects in order to overturn a given causal inference at any desired threshold. The RIR also measures the percentage of a given parameter estimate that would need to be biased in order to overturn an inference. Each of these procedures is critical to help establish causal inference, perhaps especially for research urgently studying the COVID-19 pandemic when scholars are not afforded the luxury of extended time periods to determine precise magnitudes of relationships between variables. Over the course of this chapter, we define each technique, illustrate how they are applied in the context of seminal strategic management research, offer guidelines for interpreting corresponding results, and delineate further considerations. © 2021 Emerald Publishing Limited.","PeriodicalId":207420,"journal":{"name":"Research Methodology in Strategy and Management","volume":"29 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2021-09-20","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Research Methodology in Strategy and Management","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1108/S1479-838720210000013010","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
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量化战略管理中经验推论的稳健性:混杂变量的影响阈值和推论对替代的稳健性
在本章中,我们解释了两种相关的技术,它们有助于量化给定因果推理对潜在遗漏变量和/或其他无法解释的异质性来源的敏感性。特别地,我们描述了混杂变量的影响阈值(ITCV)和替换推理的鲁棒性(RIR)。ITCV描述了被省略的变量与研究的重点参数之间产生虚假或无效统计推断所需的最小相关性。RIR是一种量化样本中需要用零效应替换的非零效应观测值的百分比的技术,以便在任何期望的阈值上推翻给定的因果推理。RIR还测量给定参数估计的百分比,这些估计需要有偏差才能推翻推断。这些程序中的每一个都是帮助建立因果推理的关键,也许对于迫切研究COVID-19大流行的研究来说尤其如此,因为学者们没有足够的时间来确定变量之间关系的精确程度。在本章的过程中,我们定义了每种技术,说明了它们如何在开创性战略管理研究的背景下应用,提供了解释相应结果的指导方针,并描述了进一步的考虑。©2021翡翠出版有限公司
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