没有反事实和个性化效应的因果建模

Benedikt Höltgen, Robert C. Williamson
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引用次数: 0

摘要

最常见的因果建模方法是奈曼和鲁宾提出的潜在结果框架。在这一框架中,反事实处理的结果被假定为定义明确的。这种形而上学的假设通常被认为是有问题的,但又是不可或缺的。传统方法不仅依赖于反事实,还依赖于分布的抽象概念和无法直接检验的独立性假设。在本文中,我们将因果推断解释为对有限人群的处理--明智预测,其中所有假设都是可检验的;这意味着我们不仅可以检验预测本身(没有任何基本问题),还可以研究预测失败时的错误来源。新框架强调了因果主张的模型依赖性以及统计推论与科学推论之间的区别。
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Causal modelling without counterfactuals and individualised effects
The most common approach to causal modelling is the potential outcomes framework due to Neyman and Rubin. In this framework, outcomes of counterfactual treatments are assumed to be well-defined. This metaphysical assumption is often thought to be problematic yet indispensable. The conventional approach relies not only on counterfactuals, but also on abstract notions of distributions and assumptions of independence that are not directly testable. In this paper, we construe causal inference as treatment-wise predictions for finite populations where all assumptions are testable; this means that one can not only test predictions themselves (without any fundamental problem), but also investigate sources of error when they fail. The new framework highlights the model-dependence of causal claims as well as the difference between statistical and scientific inference.
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