Freedman David A
University of California, Berkeley, USA.
Eval Rev. 2004 Aug;28(4):267-93. doi: 10.1177/0193841X04266432.
This article (which is mainly expository) sets up graphical models for causation, having a bit less than the usual complement of hypothetical counterfactuals. Assuming the invariance of error distributions may be essential for causal inference, but the errors themselves need not be invariant. Graphs can be interpreted using conditional distributions, so that we can better address connections between the mathematical framework and causality in the world. The identification problem is posed in terms of conditionals. As will be seen, causal relationships cannot be inferred from a data set by running regressions unless there is substantial prior knowledge about the mechanisms that generated the data. There are few successful applications of graphical models, mainly because few causal pathways can be excluded on a priori grounds. The invariance conditions themselves remain to be assessed.
本文(主要是说明性的)建立了因果关系的图形模型,其假设性反事实的补充比通常略少。假设误差分布的不变性可能对因果推断至关重要,但误差本身不一定是不变的。图形可以用条件分布来解释,这样我们就能更好地处理数学框架与现实世界因果关系之间的联系。识别问题是根据条件提出的。正如将要看到的,除非对生成数据的机制有大量的先验知识,否则无法通过运行回归从数据集中推断因果关系。图形模型的成功应用很少,主要是因为几乎没有因果路径可以基于先验理由被排除。不变性条件本身仍有待评估。