Formalizing Statistical Causality via Modal Logic
Abstract
We propose a formal language for describing and explaining statistical causality. Concretely, we define Statistical Causality Language (StaCL) for expressing causal effects and specifying the requirements for causal inference. StaCL incorporates modal operators for interventions to express causal properties between probability distributions in different possible worlds in a Kripke model. We formalize axioms for probability distributions, interventions, and causal predicates using StaCL formulas. These axioms are expressive enough to derive the rules of Pearl's do-calculus. Finally, we demonstrate by examples that StaCL can be used to specify and explain the correctness of statistical causal inference.
Keywords
Cite
@article{arxiv.2210.16751,
title = {Formalizing Statistical Causality via Modal Logic},
author = {Yusuke Kawamoto and Tetsuya Sato and Kohei Suenaga},
journal= {arXiv preprint arXiv:2210.16751},
year = {2023}
}
Comments
Full version for the paper accepted at JELIA 2023 (the 18th European Conference on Logics in Artificial Intelligence)