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Multi-Domain Causal Discovery in Bijective Causal Models

Machine Learning 2025-05-01 v1 Artificial Intelligence Methodology

Abstract

We consider the problem of causal discovery (a.k.a., causal structure learning) in a multi-domain setting. We assume that the causal functions are invariant across the domains, while the distribution of the exogenous noise may vary. Under causal sufficiency (i.e., no confounders exist), we show that the causal diagram can be discovered under less restrictive functional assumptions compared to previous work. What enables causal discovery in this setting is bijective generation mechanisms (BGM), which ensures that the functional relation between the exogenous noise EE and the endogenous variable YY is bijective and differentiable in both directions at every level of the cause variable X=xX = x. BGM generalizes a variety of models including additive noise model, LiNGAM, post-nonlinear model, and location-scale noise model. Further, we derive a statistical test to find the parents set of the target variable. Experiments on various synthetic and real-world datasets validate our theoretical findings.

Keywords

Cite

@article{arxiv.2504.21261,
  title  = {Multi-Domain Causal Discovery in Bijective Causal Models},
  author = {Kasra Jalaldoust and Saber Salehkaleybar and Negar Kiyavash},
  journal= {arXiv preprint arXiv:2504.21261},
  year   = {2025}
}

Comments

Proceedings of Causal Learning and Reasoning (CLeaR) 2025

R2 v1 2026-06-28T23:16:10.344Z