LOAICCLOMay 5, 2024

On Probabilistic and Causal Reasoning with Summation Operators

arXiv:2405.03069v22 citationsh-index: 21J Log Comput
AI Analysis

This work addresses foundational questions in AI and theoretical computer science about the limits of automated reasoning in causal and probabilistic models, though it is incremental in extending prior complexity results.

The paper tackles the computational complexity of probabilistic and causal reasoning with summation operators, showing that these languages remain equally difficult as their counterparts without summation, and reveals undecidability when free variables have unrestricted ranges.

Ibeling et al. (2023). axiomatize increasingly expressive languages of causation and probability, and Mosse et al. (2024) show that reasoning (specifically the satisfiability problem) in each causal language is as difficult, from a computational complexity perspective, as reasoning in its merely probabilistic or "correlational" counterpart. Introducing a summation operator to capture common devices that appear in applications -- such as the $do$-calculus of Pearl (2009) for causal inference, which makes ample use of marginalization -- van der Zander et al. (2023) partially extend these earlier complexity results to causal and probabilistic languages with marginalization. We complete this extension, fully characterizing the complexity of probabilistic and causal reasoning with summation, demonstrating that these again remain equally difficult. Surprisingly, allowing free variables for random variable values results in a system that is undecidable, so long as the ranges of these random variables are unrestricted. We finally axiomatize these languages featuring marginalization (or more generally summation), resolving open questions posed by Ibeling et al. (2023).

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