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首页> 外文期刊>European journal of epidemiology >Limitations of individual causal models, causal graphs, and ignorability assumptions, as illustrated by random confounding and design unfaithfulness
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Limitations of individual causal models, causal graphs, and ignorability assumptions, as illustrated by random confounding and design unfaithfulness

机译:个别因果模型,因果图和可忽略性假设的局限性,如随机混淆和设计不忠实所说明

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We describe how ordinary interpretations of causal models and causal graphs fail to capture important distinctions among ignorable allocation mechanisms for subject selection or allocation. We illustrate these limitations in the case of random confounding and designs that prevent such confounding. In many experimental designs individual treatment allocations are dependent, and explicit population models are needed to show this dependency. In particular, certain designs impose unfaithful covariate-treatment distributions to prevent random confounding, yet ordinary causal graphs cannot discriminate between these unconfounded designs and confounded studies. Causal models for populations are better suited for displaying these phenomena than are individual-level models, because they allow representation of allocation dependencies as well as outcome dependencies across individuals. Nonetheless, even with this extension, ordinary graphical models still fail to capture distinctions between hypothetical superpopulations (sampling distributions) and observed populations (actual distributions), although potential-outcome models can be adapted to show these distinctions and their consequences.
机译:我们描述了因果模型和因果图的普通解释如何无法捕获可忽略的主体选择或分配机制中的重要区别。我们在随机混杂的情况下说明了这些限制,并说明了防止这种混杂的设计。在许多实验设计中,各个治疗方案的分配是相关的,因此需要明确的种群模型来显示这种依赖性。特别是,某些设计施加了不忠实的协变量处理分布,以防止随机混淆,但普通因果图无法区分这些无混淆的设计和混杂的研究。人口因果模型比个人水平模型更适合显示这些现象,因为它们可以表示个体之间的分配依存关系和结果依存关系。尽管如此,尽管可以对潜在结果模型进行调整以显示这些区别及其后果,但是即使进行了这种扩展,普通的图形模型仍然无法捕获假设的超种群(抽样分布)和观察到的种群(实际分布)之间的区别。

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