Generalized Independent Noise Condition for Estimating Causal Structure with Latent Variables
Feng Xie, Biwei Huang, Zhengming Chen, Ruichu Cai, Clark Glymour, Zhi, Geng, and Kun Zhang

TL;DR
This paper introduces a Generalized Independent Noise (GIN) condition for linear non-Gaussian acyclic models with latent variables, enabling the identification of complex causal structures including latent confounders and hierarchies.
Contribution
The paper proposes the GIN condition as a unifying criterion for causal discovery in models with latent variables, extending existing methods and providing necessary and sufficient graphical conditions.
Findings
GIN condition characterizes causal relations with latent variables.
The method effectively estimates hierarchical latent causal models.
Experimental results validate the approach's accuracy and efficiency.
Abstract
We investigate the task of learning causal structure in the presence of latent variables, including locating latent variables and determining their quantity, and identifying causal relationships among both latent and observed variables. To this end, we propose a Generalized Independent Noise (GIN) condition for linear non-Gaussian acyclic causal models that incorporate latent variables, which establishes the independence between a linear combination of certain measured variables and some other measured variables. Specifically, for two observed random vectors and , GIN holds if and only if and are independent, where is a non-zero parameter vector determined by the cross-covariance between and . We then give necessary and sufficient graphical criteria of the GIN condition in linear non-Gaussian…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Data Quality and Management · Machine Learning and Algorithms
MethodsGraph Isomorphism Network
