Extension of Three-Variable Counterfactual Casual Graphic Model: from Two-Value to Three-Value Random Variable

Liu, Jingwei

arXiv.org Artificial Intelligence 

The extension of counterfactual causal graphic model with three variables of vertex set in directed acyclic graph (DAG) is discussed in this paper by extending two- value distribution to three-value distribution of the variables involved in DAG. Using the conditional independence as ancillary information, 6 kinds of extension counterfactual causal graphic models with some variables are extended from two-value distribution to three-value distribution and the sufficient conditions of identifiability are derived.

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