Notes on Forr\'e's Notion of Conditional Independence and Causal Calculus for Continuous Variables

arXiv stat.ML / 3/26/2026

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Key Points

  • The notes build on Forr\'e\u2019s transitional conditional independence, which is designed to unify conditional independence concepts for both stochastic (random) and non-stochastic variables.
  • They emphasize the earlier framework\u2019s strong global Markov property linking transitional conditional independencies to graphical separation criteria in directed mixed graphs with input nodes (iDMGs).
  • The document revisits and clarifies a general measure-theoretic causal calculus for iDMGs, including pointing out subtle issues that arise in that setting.
  • It extends the\u201cone-line\u201d formulation of the ID algorithm (Richardson et al., 2023) from a more specific setting to the general measure-theoretic framework, aiming to broaden applicability.

Abstract

Recently, Forr\'e (arXiv:2104.11547, 2021) introduced transitional conditional independence, a notion of conditional independence that provides a unified framework for both random and non-stochastic variables. The original paper establishes a strong global Markov property connecting transitional conditional independencies with suitable graphical separation criteria for directed mixed graphs with input nodes (iDMGs), together with a version of causal calculus for iDMGs in a general measure-theoretic setting. These notes aim to further illustrate the motivations behind this framework and its connections to the literature, highlight certain subtlies in the general measure-theoretic causal calculus, and extend the "one-line" formulation of the ID algorithm of Richardson et al. (Ann. Statist. 51(1):334--361, 2023) to the general measure-theoretic setting.

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