The aim of this paper is to discuss a recent result which shows that probabilistic inference in the presence of (unknown) causal mechanisms can be tractable for models that have traditionally been viewed as intractable. This result was reported recently to facilitate model-based supervised learning but it can be interpreted in a causality context as follows. One can compile a non-parametric causal graph into an arithmetic circuit that supports inference in time linear in the circuit size. The circuit is also non-parametric so it can be used to estimate parameters from data and to further reason (in linear time) about the causal graph parametrized by these estimates. Moreover, the circuit size can sometimes be bounded even when the treewidth of the causal graph is not, leading to tractable inference on models that have been deemed intractable previously. This has been enabled by a new technique that can exploit causal mechanisms computationally but without needing to know their identities (the classical setup in causal inference). Our goal is to provide a causality-oriented exposure to these new results and to speculate on how they may potentially contribute to more scalable and versatile causal inference.
翻译:本文的目的是讨论最近的结果,它表明(未知的)因果关系机制存在时的概率推论对于传统上被视为棘手的模型来说是可行的。这一结果最近被报告是为了促进基于模型的监督性学习,但可以按以下的因果关系来解释。我们可以将非参数因果图编成一个算术电路,支持时间线的推论,从而支持电路大小的时间线推论。电路也是非参数性,因此可以用来从数据中估计参数,并进一步(线性时间)解释这些估计得出的因果图形的准差值。此外,电路的大小有时可能受到约束,即使因果图的树边没有,导致对以前被认为棘手的模型进行可移植的推论。这得益于一种新的技术,它可以利用因果机制进行计算,但不必知道其特性(典型的因果关系推论)。我们的目标是为这些新结果提供面向因果关系的暴露,并推测这些结果如何可能促成更可伸缩性和多面性因果关系的推论。