Cyclic Counterfactuals under Shift-Scale Interventions

Saha, Saptarshi, Rathore, Dhruv Vansraj, Garain, Utpal

arXiv.org Machine Learning 

Most counterfactual inference frameworks traditionally assume acyclic structural causal models (SCMs), i.e. directed acyclic graphs (DAGs). However, many real-world systems (e.g. biological systems) contain feedback loops or cyclic dependencies that violate acyclicity. In this work, we study counterfactual inference in cyclic SCMs under shift-scale interventions, i.e., soft, policy-style changes that rescale and/or shift a variable's mechanism.

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