The Observational Partial Order of Causal Structures with Latent Variables
Marina Maciel Ansanelli, Elie Wolfe, Robert W. Spekkens

TL;DR
This paper characterizes the observational dominance order among causal structures with latent variables, revealing the prevalence of inequality constraints and implications for causal discovery and quantum-classical distinctions.
Contribution
It provides a complete characterization for three visible variables and partial for four, advancing understanding of causal structure dominance and inequality constraints.
Findings
Complete dominance order characterization for three variables.
Partial characterization for four variables.
Inequality constraints are common as variables increase.
Abstract
For two causal structures with the same set of visible variables, one is said to observationally dominate the other if the set of distributions over the visible variables realizable by the first contains the set of distributions over the visible variables realizable by the second. Knowing such dominance relations is useful for adjudicating between these structures given observational data. We here consider the problem of determining the partial order of equivalence classes of causal structures with latent variables relative to observational dominance. We provide a complete characterization of the dominance order in the case of three visible variables, and a partial characterization in the case of four visible variables. Our techniques also help to identify which observational equivalence classes have a set of realizable distributions that is characterized by nontrivial inequality…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Logic, Reasoning, and Knowledge · Scientific Computing and Data Management
MethodsSparse Evolutionary Training
