Causal reasoning in relational domains is fundamental to studying real-world social phenomena in which individual units can influence each other's traits and behavior. Dynamics between interconnected units can be represented as an instantiation of a relational causal model; however, causal reasoning over such instantiation requires additional templating assumptions that capture feedback loops of influence. Previous research has developed lifted representations to address the relational nature of such dynamics but has strictly required that the representation has no cycles. To facilitate cycles in relational representation and learning, we introduce relational $\sigma$-separation, a new criterion for understanding relational systems with feedback loops. We also introduce a new lifted representation, $\sigma$-abstract ground graph which helps with abstracting statistical independence relations in all possible instantiations of the cyclic relational model. We show the necessary and sufficient conditions for the completeness of $\sigma$-AGG and that relational $\sigma$-separation is sound and complete in the presence of one or more cycles with arbitrary length. To the best of our knowledge, this is the first work on representation of and reasoning with cyclic relational causal models.
翻译:相关领域的因果推理是研究现实世界社会现象的基础,其中每个单位可以影响彼此的特性和行为。互联单位之间的动态可以作为关系因果关系模型的即时体现;然而,关于这种即时推理的因果推理需要额外的诱惑性假设,以捕捉回回路的影响回路。以前的研究已经为解决这种动态的关联性质发展了取消的表述,但严格要求代表性没有周期。为了便利关系代表性和学习的周期,我们引入了关系$\sigma$-分离,这是理解关系系统与反馈循环的新标准。我们还引入了一个新的提升代表制,即$\sigma$-astrastrict 地面图,该图有助于在周期关系模型的所有可能的即时,抽象统计独立关系。我们展示了解决美元-AGG和关系的完整性的必要和充分条件,在存在一个或一个以上任意长度的周期中,美元\sigmam-sement是合理和完整的。我们最了解的是,这是与周期关系因果关系的因果关系和推论的首项工作。