LLM Reasoning 相关度: 7/10

Causal and Compositional Abstraction

Robin Lorenz, Sean Tull
arXiv: 2602.16612v1 发布: 2026-02-18 更新: 2026-02-18

AI 摘要

论文提出了基于范畴论的因果抽象通用框架,统一了多种因果抽象概念,并拓展到量子模型。

主要贡献

  • 提出了基于自然变换的因果抽象通用框架
  • 统一了多种现有的因果抽象概念
  • 引入了更强的组件级抽象概念
  • 将抽象推广到量子模型,探索可解释量子AI

方法论

使用范畴论形式化因果模型及其查询,定义上下向抽象,并研究组件级别的抽象性质。

原文摘要

Abstracting from a low level to a more explanatory high level of description, and ideally while preserving causal structure, is fundamental to scientific practice, to causal inference problems, and to robust, efficient and interpretable AI. We present a general account of abstractions between low and high level models as natural transformations, focusing on the case of causal models. This provides a new formalisation of causal abstraction, unifying several notions in the literature, including constructive causal abstraction, Q-$τ$ consistency, abstractions based on interchange interventions, and `distributed' causal abstractions. Our approach is formalised in terms of category theory, and uses the general notion of a compositional model with a given set of queries and semantics in a monoidal, cd- or Markov category; causal models and their queries such as interventions being special cases. We identify two basic notions of abstraction: downward abstractions mapping queries from high to low level; and upward abstractions, mapping concrete queries such as Do-interventions from low to high. Although usually presented as the latter, we show how common causal abstractions may, more fundamentally, be understood in terms of the former. Our approach also leads us to consider a new stronger notion of `component-level' abstraction, applying to the individual components of a model. In particular, this yields a novel, strengthened form of constructive causal abstraction at the mechanism-level, for which we prove characterisation results. Finally, we show that abstraction can be generalised to further compositional models, including those with a quantum semantics implemented by quantum circuits, and we take first steps in exploring abstractions between quantum compositional circuit models and high-level classical causal models as a means to explainable quantum AI.

标签

因果推断 抽象 范畴论 量子AI 可解释性

arXiv 分类

cs.LO cs.AI math.CT quant-ph