Probabilistic and Causal Satisfiability: the Impact of Marginalization

Julian Dörfler, Benito van der Zander, Markus Bläser, Maciej Liskiewicz
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Abstract

The framework of Pearl's Causal Hierarchy (PCH) formalizes three types of reasoning: observational, interventional, and counterfactual, that reflect the progressive sophistication of human thought regarding causation. We investigate the computational complexity aspects of reasoning in this framework focusing mainly on satisfiability problems expressed in probabilistic and causal languages across the PCH. That is, given a system of formulas in the standard probabilistic and causal languages, does there exist a model satisfying the formulas? The resulting complexity changes depending on the level of the hierarchy as well as the operators allowed in the formulas (addition, multiplication, or marginalization). We focus on formulas involving marginalization that are widely used in probabilistic and causal inference, but whose complexity issues are still little explored. Our main contribution are the exact computational complexity results showing that linear languages (allowing addition and marginalization) yield NP^PP-, PSPACE-, and NEXP-complete satisfiability problems, depending on the level of the PCH. Moreover, we prove that the problem for the full language (allowing additionally multiplication) is complete for the class succ$\exists$R for languages on the highest, counterfactual level. Previous work has shown that the satisfiability problem is complete for succ$\exists$R on the lower levels leaving the counterfactual case open. Finally, we consider constrained models that are restricted to a small polynomial size. The constraint on the size reduces the complexity of the interventional and counterfactual languages to NEXP-complete.
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概率可满足性和因果可满足性:边缘化的影响
珀尔因果层次理论(PCH)框架形式化了三种推理类型:观察推理、干预推理和反事实推理,它们反映了人类在因果关系方面的复杂性。我们在这个框架中研究推理的计算复杂性,主要侧重于用概率语言和因果语言表达的可满足性问题。也就是说,给定标准概率语言和因果语言的公式系统,是否存在满足这些公式的模型?由此产生的复杂度会随着层次结构以及公式中允许的运算符(加法、乘法或边际化)的不同而变化。我们将重点放在涉及边际化的公式上,这些公式在概率推理和因果推理中被广泛使用,但对其复杂性问题的探讨仍然很少。我们的主要贡献是精确的计算复杂度结果,这些结果表明线性语言(允许加法和边际化)会产生 NP^PP-、PSPACE- 和 NEXP-完备的可满足性问题,具体取决于 PCH 的级别。此外,我们还证明,对于最高反事实层次的语言来说,完整语言(允许附加乘法)的问题对于 succ$\exists$R 类来说是完整的。以前的工作表明,对于较低层次的 succ$\exists$R 来说,可满足性问题是完备的,而反事实情况则尚未解决。最后,我们考虑了限制为小多项式大小的约束模型。对大小的限制将干预语言和反事实语言的复杂性降低到 NEXP-完全。
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