Causal models have proven extremely useful in offering formal representations of causal relationships between a set of variables. Yet in many situations, there are non-causal relationships among variables. For example, we may want variables $LDL$, $HDL$, and $TOT$ that represent the level of low-density lipoprotein cholesterol, the level of lipoprotein high-density lipoprotein cholesterol, and total cholesterol level, with the relation $LDL+HDL=TOT$. This cannot be done in standard causal models, because we can intervene simultaneously on all three variables. The goal of this paper is to extend standard causal models to allow for constraints on settings of variables. Although the extension is relatively straightforward, to make it useful we have to define a new intervention operation that $disconnects$ a variable from a causal equation. We give examples showing the usefulness of this extension, and provide a sound and complete axiomatization for causal models with constraints.
翻译:事实证明,因果模型在对一组变量之间的因果关系进行正式表述方面非常有用。然而,在许多情况下,各变量之间存在非因果关系。例如,我们可能想要变量值($LDL$、$HDL$和$TOT$),这些变量代表低密度脂蛋白胆固醇、高密度脂蛋白胆固醇和胆固醇水平,以及胆固醇总水平,与 $LDL+HDL=TOT$的关系。这无法在标准因果模型中做到,因为我们可以同时干预所有三种变量。本文的目标是扩大标准因果模型,以允许对变量设置的限制。虽然扩展范围相对简单,但我们必须确定一个新的干预操作,即将美元从因果方程式中分离出一个变量。我们举例说明这一扩展的效用,并为有限制的因果模型提供一个健全和完整的氧化性模型。