Causal Additive Models with Unobserved Causal Paths and Backdoor Paths
- URL: http://arxiv.org/abs/2502.07646v2
- Date: Fri, 10 Oct 2025 14:29:26 GMT
- Title: Causal Additive Models with Unobserved Causal Paths and Backdoor Paths
- Authors: Thong Pham, Takashi Nicholas Maeda, Shohei Shimizu,
- Abstract summary: Causal additive models provide a tractable yet expressive framework for causal discovery in the presence of hidden variables.<n>We establish sufficient conditions under which causal directions can be identified in many such cases.<n>We derive conditions that enable identification of the parent-child relationship in a bow, an adjacent pair of observed variables sharing a hidden common parent.
- Score: 3.5822730776618177
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Causal additive models provide a tractable yet expressive framework for causal discovery in the presence of hidden variables. However, when unobserved backdoor or causal paths exist between two variables, their causal relationship is often unidentifiable under existing theories. We establish sufficient conditions under which causal directions can be identified in many such cases. In particular, we derive conditions that enable identification of the parent-child relationship in a bow, an adjacent pair of observed variables sharing a hidden common parent. This represents a notoriously difficult case in causal discovery, and, to our knowledge, no prior work has established such identifiability in any causal model without imposing assumptions on the hidden variables. Our conditions rely on new characterizations of regression sets and a hybrid approach that combines independence among regression residuals with conditional independencies among observed variables. We further provide a sound and complete algorithm that incorporates these insights, and empirical evaluations demonstrate competitive performance with state-of-the-art methods.
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