Simpson’s paradox beyond confounding

IF 1.5 1区 哲学 Q1 HISTORY & PHILOSOPHY OF SCIENCE European Journal for Philosophy of Science Pub Date : 2024-09-13 DOI:10.1007/s13194-024-00610-8
Zili Dong, Weixin Cai, Shimin Zhao
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Abstract

Simpson’s paradox (SP) is a statistical phenomenon where the association between two variables reverses, disappears, or emerges, after conditioning on a third variable. It has been proposed (by, e.g., Judea Pearl) that SP should be analyzed using the framework of graphical causal models (i.e., causal DAGs) in which SP is diagnosed as a symptom of confounding bias. This paper contends that this confounding-based analysis cannot fully capture SP: there are cases of SP that cannot be explained away in terms of confounding. Previous works have argued that some cases of SP do not require causal analysis at all. Despite being a logically valid counterexample, we argue that this type of cases poses only a limited challenge to Pearl’s analysis of SP. In our view, a more powerful challenge to Pearl comes from cases of SP that do require causal analysis but can arise without confounding. We demonstrate with examples that accidental associations due to genetic drift, the use of inappropriate aggregate variables as causes, and interactions between units (i.e., inter-unit causation) can all give rise to SP of this type. The discussion is also extended to the amalgamation paradox (of which SP is a special form) which can occur due to the use of non-collapsible association measures, in the absence of confounding.

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超越混淆的辛普森悖论
辛普森悖论(Simpson's paradox,SP)是一种统计现象,即两个变量之间的关联在以第三个变量为条件后发生逆转、消失或出现。有人(如 Judea Pearl)提出,应使用图形因果模型(即因果 DAG)框架来分析辛普森悖论,在该框架中,辛普森悖论被诊断为混杂偏差的症状。本文认为,这种基于混杂因素的分析无法完全捕捉 SP:有些 SP 个案无法用混杂因素来解释。以前的研究认为,有些 SP 病例根本不需要进行因果分析。尽管这是一个逻辑上有效的反例,但我们认为,这类案例对珀尔的 SP 分析只构成了有限的挑战。我们认为,对珀尔更有力的挑战来自于确实需要因果分析但可能在没有混淆的情况下出现的 SP 案例。我们举例说明,遗传漂移导致的意外关联、使用不恰当的总体变量作为原因以及单位之间的相互作用(即单位间因果关系)都可能导致此类 SP。讨论还扩展到了合并悖论(SP 是其一种特殊形式),在没有混杂因素的情况下,由于使用了不可合并的关联测量值,可能会出现合并悖论。
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来源期刊
European Journal for Philosophy of Science
European Journal for Philosophy of Science HISTORY & PHILOSOPHY OF SCIENCE-
CiteScore
2.60
自引率
13.30%
发文量
57
期刊介绍: The European Journal for Philosophy of Science publishes groundbreaking works that can deepen understanding of the concepts and methods of the sciences, as they explore increasingly many facets of the world we live in. It is of direct interest to philosophers of science coming from different perspectives, as well as scientists, citizens and policymakers. The journal is interested in articles from all traditions and all backgrounds, as long as they engage with the sciences in a constructive, and critical, way. The journal represents the various longstanding European philosophical traditions engaging with the sciences, but welcomes articles from every part of the world.
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