This paper presents a topological learning-theoretic perspective on causal inference by introducing a series of topologies defined on general spaces of structural causal models (SCMs). As an illustration of the framework we prove a topological causal hierarchy theorem, showing that substantive assumption-free causal inference is possible only in a meager set of SCMs. Thanks to a known correspondence between open sets in the weak topology and statistically verifiable hypotheses, our results show that inductive assumptions sufficient to license valid causal inferences are statistically unverifiable in principle. Similar to no-free-lunch theorems for statistical inference, the present results clarify the inevitability of substantial assumptions for causal inference. An additional benefit of our topological approach is that it easily accommodates SCMs with infinitely many variables. We finally suggest that the framework may be helpful for the positive project of exploring and assessing alternative causal-inductive assumptions.
翻译:本文介绍了一系列在结构性因果模型一般空间上界定的统计学学理论,从统计学学学理论角度阐述了因果推论。作为框架的例证,我们证明存在一个因果等级结构,表明实质性的无因果推论只有在一套微小的SCM模型中才可能实现。由于在薄弱的地形学中的开放组合和统计上可核查的假设之间已知的对应,我们的结果显示,在统计学上无法核查足以证明有效因果推论的引论的引论假设。与统计推论的无自由理论类似,目前的结果澄清了实质性因果推论假设的不可避免性。我们的表层学方法的另一个好处是,它很容易以无限多的变量容纳SCM模型。我们最后建议,框架可能有助于探索和评估其他因果引论假设的积极项目。