Entropic Causal Inference: Identifiability and Finite Sample Results
–Neural Information Processing Systems
Entropic causal inference is a framework for inferring the causal direction between two categorical variables from observational data. The central assumption is that the amount of unobserved randomness in the system is not too large. This unobserved randomness is measured by the entropy of the exogenous variable in the underlying structural causal model, which governs the causal relation between the observed variables.
Neural Information Processing Systems
May-31-2025, 08:24:36 GMT