Learning high-dimensional quantum entanglement through physics-guided neural networks
Yang Xu, Hao Zhang, Wenwen Zhang, Luchang Niu, Girish Kulkarni, Mahtab Amooei, Sergio Carbajo, Robert W. Boyd

TL;DR
This paper introduces a physics-guided neural network that efficiently reconstructs high-dimensional quantum entanglement signatures from SPDC sources, significantly speeding up and improving modal characterization accuracy.
Contribution
The authors develop a novel FiLM-modulated neural network with a physics-informed loss function for rapid, high-fidelity quantum entanglement modal reconstruction, outperforming traditional methods.
Findings
Achieved high-fidelity reconstruction with low divergence metrics.
Provided a 128-fold speedup over numerical simulation.
Demonstrated robustness with limited or contaminated training data.
Abstract
High-gain spontaneous parametric down-conversion (SPDC) produces bright squeezed vacuum with rich high-dimensional entanglement, but its output is inherently multimodal and non-perturbative, making the full modal characterization a major computational bottleneck. We propose a physics-guided deep neural network that reconstructs the source's modal fingerprint: the high-dimensional correlation signature across radial and azimuthal indices. We designed a FiLM-modulated convolutional architecture that predicts the joint (m,l) distribution, and training is driven by a hybrid loss that couples data-driven metrics (JSD, KL, MSE, Wasserstein) with a soft orbital-angular-momentum (OAM) conservation term, providing an essential inductive bias toward physically consistent solutions. Across gain regimes, our method achieves high-fidelity reconstruction with average JSD of 1.96e-3, WEMD of 1.54e-3,…
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