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arxiv: 2410.14466 · v2 · pith:LFCFKJHP · submitted 2024-10-18 · quant-ph · cond-mat.stat-mech· cs.LG· hep-lat

Flow-Based Sampling for Entanglement Entropy and the Machine Learning of Defects

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classification quant-ph cond-mat.stat-mechcs.LGhep-lat
keywords defectentanglementfieldflow-basedlatticetechniquetheoryapproaches
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We introduce a novel technique to numerically calculate R\'enyi entanglement entropies in lattice quantum field theory using generative models. We describe how flow-based approaches can be combined with the replica trick using a custom neural-network architecture around a lattice defect connecting two replicas. Numerical tests for the $\phi^4$ scalar field theory in two and three dimensions demonstrate that our technique outperforms state-of-the-art Monte Carlo calculations, and exhibit a promising scaling with the defect size.

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Cited by 4 Pith papers

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