The notion of causal effect is fundamental across many scientific disciplines. Traditionally, quantitative researchers have studied causal effects at the level of variables; for example, how a certain drug dose (W) causally affects a patient's blood pressure (Y). However, in many modern data domains, the raw variables-such as pixels in an image or tokens in a language model-do not have the semantic structure needed to formulate meaningful causal questions. In this paper, we offer a more fine-grained perspective by studying causal effects at the level of events, drawing inspiration from probability theory, where core notions such as independence are first given for events and sigma-algebras, before random variables enter the picture. Within the measure-theoretic framework of causal spaces, a recently introduced axiomatisation of causality, we first introduce several binary definitions that determine whether a causal effect is present, as well as proving some properties of them linking causal effect to (in)dependence under an intervention measure. Further, we provide quantifying measures that capture the strength and nature of causal effects on events, and show that we can recover the common measures of treatment effect as special cases.
翻译:因果效应的概念是众多科学领域的基石。传统上,定量研究者在变量层面探讨因果效应,例如某种药物剂量(W)如何因果性地影响患者的血压(Y)。然而,在许多现代数据领域中,原始变量(如图像中的像素或语言模型中的词元)缺乏构建有意义因果问题所需的语义结构。本文借鉴概率论的思路,在事件层面研究因果效应,提供了一种更为细粒度的视角。在概率论中,独立性等核心概念首先在事件和σ-代数中定义,随后才引入随机变量。基于因果空间——一种新近提出的因果公理化体系的测度论框架,我们首先引入若干二元定义以判定因果效应是否存在,并证明这些定义在干预测度下将因果效应与(不)独立性相关联的性质。进一步,我们提出量化测度以刻画事件层面因果效应的强度与性质,并证明常见的处理效应测度可作为其特例予以还原。