cs.AI updates on arXiv.org 10月29日 12:17
基于柔道计算因果发现框架
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本文提出一种基于柔道计算方法的直觉主义去中心化因果发现框架,通过形式化地定义j-stable因果推理,实现了在范畴论中利用j-do-calculus进行因果发现。实验结果表明,该方法在计算效率上优于传统因果发现方法。

arXiv:2510.23942v1 Announce Type: new Abstract: We describe a theory and implementation of an intuitionistic decentralized framework for causal discovery using judo calculus, which is formally defined as j-stable causal inference using j-do-calculus in a topos of sheaves. In real-world applications -- from biology to medicine and social science -- causal effects depend on regime (age, country, dose, genotype, or lab protocol). Our proposed judo calculus formalizes this context dependence formally as local truth: a causal claim is proven true on a cover of regimes, not everywhere at once. The Lawvere-Tierney modal operator j chooses which regimes are relevant; j-stability means the claim holds constructively and consistently across that family. We describe an algorithmic and implementation framework for judo calculus, combining it with standard score-based, constraint-based, and gradient-based causal discovery methods. We describe experimental results on a range of domains, from synthetic to real-world datasets from biology and economics. Our experimental results show the computational efficiency gained by the decentralized nature of sheaf-theoretic causal discovery, as well as improved performance over classical causal discovery methods.

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因果发现 柔道计算 去中心化框架 范畴论 计算效率
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