Causal models with unobserved variables impose nontrivial constraints on the distributions over the observed variables. When a common cause of two variables is unobserved, it is impossible to uncover the causal relation between them without making additional assumptions about the model. In this work, we consider causal models with a promise that unobserved variables have known cardinalities. We derive inequality constraints implied by d-separation in such models. Moreover, we explore the possibility of leveraging this result to study causal influence in models that involve quantum systems.
翻译:带有未观测变量的因果模型对所观察到变量的分布施加非边际限制。 当两个变量的共同原因没有得到观察时,如果不对模型做更多的假设,就无法发现它们之间的因果关系。 在这项工作中,我们考虑因果模型,并承诺未观测变量已经知道主要因素。我们从这些模型中得出 d 分离所隐含的不平等制约。此外,我们探索利用这一结果研究涉及量子系统的模型的因果影响的可能性。