Quantum Entanglement as Super-Confounding: From Bell's Theorem to Robust Machine Learning
By: Pilsung Kang
Potential Business Impact:
Quantum entanglement helps AI learn better.
Bell's theorem reveals a profound conflict between quantum mechanics and local realism, a conflict we reinterpret through the modern lens of causal inference. We propose and computationally validate a framework where quantum entanglement acts as a "super-confounding" resource, generating correlations that violate the classical causal bounds set by Bell's inequalities. This work makes three key contributions: First, we establish a physical hierarchy of confounding (Quantum > Classical) and introduce Confounding Strength (CS) to quantify this effect. Second, we provide a circuit-based implementation of the quantum $\mathcal{DO}$-calculus to distinguish causality from spurious correlation. Finally, we apply this calculus to a quantum machine learning problem, where causal feature selection yields a statistically significant 11.3% average absolute improvement in model robustness. Our framework bridges quantum foundations and causal AI, offering a new, practical perspective on quantum correlations.
Similar Papers
Quantum Machine Learning for Optimizing Entanglement Distribution in Quantum Sensor Circuits
Quantum Physics
Makes super-sensitive sensors work better and faster.
Quantum circuit complexity and unsupervised machine learning of topological order
Quantum Physics
Helps quantum computers learn patterns better.
Closing the problem of which causal structures of up to six total nodes have a classical-quantum gap
Quantum Physics
Shows how quantum connections are stranger than normal.