We propose a new approach to temporal inference, inspired by the Pearlian causal inference paradigm - though quite different from Pearl's approach formally. Rather than using directed acyclic graphs, we make use of factored sets, which are sets expressed as Cartesian products. We show that finite factored sets are powerful tools for inferring temporal relations. We introduce an analog of d-separation for factored sets, conditional orthogonality, and we demonstrate that this notion is equivalent to conditional independence in all probability distributions on a finite factored set.
翻译:我们提出一个新的时间推论方法,其灵感来自珍珠因果推论范式,虽然与珍珠的正规方法大不相同。我们不使用定向的单环图,而是使用以笛卡尔产品表示的参数组。我们显示,有限因数组是推导时间关系的有力工具。我们引入了一个参数组别、有条件的分解的模拟,并且我们证明,这个概念相当于在限定因数组中所有概率分布的有条件独立。