Causality and tractable probabilistic models

David Cruz, Jorge Batista
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Abstract

Causal assertions stem from an asymmetric relation between some variable's causes and effects, i.e., they imply the existence of a function decomposition of a model where the effects are a function of the causes without implying that the causes are functions of the effects. In structural causal models, information is encoded in the compositions of functions that define variables because that information is used to constraint how an intervention that changes the definition of a variable influences the rest of the variables. Current probabilistic models with tractable marginalization also imply a function decomposition but with the purpose of allowing easy marginalization of variables. In this article, structural causal models are extended so that the information implicitly stored in their structure is made explicit in an input–output mapping in higher dimensional representation where we get to define the cause–effect relationships as constraints over a function space. Using the cause–effect relationships as constraints over a space of functions, the existing methodologies for handling causality with tractable probabilistic models are unified under a single framework and generalized.
因果关系和可操作的概率模型
因果断言源于某些变量的因和果之间的不对称关系,即它们意味着模型中存在一种函数分解,在这种分解中,果是因的函数,而不意味着因是果的函数。在结构因果模型中,定义变量的函数组成中包含了信息,因为这些信息被用来约束改变变量定义的干预措施对其他变量的影响。目前的概率模型具有可操作性的边际化,也意味着函数分解,但其目的是便于变量的边际化。本文对结构因果模型进行了扩展,使其结构中隐含的信息在输入-输出映射中以更高的维度表示出来,我们可以把因果关系定义为函数空间上的约束条件。利用函数空间上的因果关系作为约束条件,将现有的利用可控概率模型处理因果关系的方法统一到一个框架下并加以推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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