Quantum Entropic Causal Inference
Mohammad Ali Javidian, Vaneet Aggarwal, Fanglin Bao, Zubin Jacob

TL;DR
This paper introduces a quantum causal inference framework based on entropic principles, enabling the identification of causal directions in quantum systems without interventions, with potential applications in quantum networks and error correction.
Contribution
It develops a novel quantum causal structural equation model and scalable algorithm that unify classical and quantum causality through entropic measures.
Findings
Successfully applied to synthetic quantum data for noise source identification
Bridges classical and quantum causal inference using entropic principles
Provides a scalable method for quantum causal analysis in complex systems
Abstract
The class of problems in causal inference which seeks to isolate causal correlations solely from observational data even without interventions has come to the forefront of machine learning, neuroscience and social sciences. As new large scale quantum systems go online, it opens interesting questions of whether a quantum framework exists on isolating causal correlations without any interventions on a quantum system. We put forth a theoretical framework for merging quantum information science and causal inference by exploiting entropic principles. At the root of our approach is the proposition that the true causal direction minimizes the entropy of exogenous variables in a non-local hidden variable theory. The proposed framework uses a quantum causal structural equation model to build the connection between two fields: entropic causal inference and the quantum marginal problem. First,…
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