The role of causal criteria in causal inferences: Bradford Hill's "aspects of association".

Andrew C Ward
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Abstract

As noted by Wesley Salmon and many others, causal concepts are ubiquitous in every branch of theoretical science, in the practical disciplines and in everyday life. In the theoretical and practical sciences especially, people often base claims about causal relations on applications of statistical methods to data. However, the source and type of data place important constraints on the choice of statistical methods as well as on the warrant attributed to the causal claims based on the use of such methods. For example, much of the data used by people interested in making causal claims come from non-experimental, observational studies in which random allocations to treatment and control groups are not present. Thus, one of the most important problems in the social and health sciences concerns making justified causal inferences using non-experimental, observational data. In this paper, I examine one method of justifying such inferences that is especially widespread in epidemiology and the health sciences generally - the use of causal criteria. I argue that while the use of causal criteria is not appropriate for either deductive or inductive inferences, they do have an important role to play in inferences to the best explanation. As such, causal criteria, exemplified by what Bradford Hill referred to as "aspects of [statistical] associations", have an indispensible part to play in the goal of making justified causal claims.

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因果标准在因果推断中的作用:Bradford-Hill的“关联方面”。
正如韦斯利·萨蒙和其他许多人所指出的,因果概念在理论科学的每一个分支、实践学科和日常生活中都无处不在。特别是在理论和实践科学中,人们经常将因果关系的主张建立在统计方法对数据的应用之上。然而,数据的来源和类型对统计方法的选择以及基于使用这些方法的因果索赔的依据都有重要的限制。例如,有兴趣提出因果关系主张的人使用的许多数据来自非实验性观察性研究,在这些研究中,没有对治疗组和对照组进行随机分配。因此,社会和健康科学中最重要的问题之一是使用非实验性的观察数据进行合理的因果推断。在这篇论文中,我研究了一种在流行病学和健康科学中特别普遍的证明这种推断的方法——因果标准的使用。我认为,虽然因果标准的使用不适合演绎或归纳推理,但它们确实在推理中发挥着重要作用,以获得最佳解释。因此,以Bradford Hill所称的“[统计]关联的各个方面”为例的因果标准,在提出合理的因果主张的目标中发挥着不可或缺的作用。
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