Volume 518 - The 42nd International Symposium on Lattice Field Theory (LATTICE2025) - Parallel Session Quantum computing and quantum information
Computing quantum entanglement with machine learning
A. Bulgarelli*, E. Cellini, K. Jansen, S. Kühn, A. Nada, S. Nakajima, K.A. Nicoli and M. Panero
*: corresponding author
Full text: Not available
Abstract
Entanglement calculations in quantum field theories are extremely challenging and typically rely on the replica trick, where the problem is rephrased in a study of defects. We demonstrate that the use of deep generative models drastically outperforms standard Monte Carlo algorithms. Remarkably, such a machine-learning method enables high-precision estimates of Rényi entropies in three dimensions for very large lattices. Moreover, we propose a new paradigm for studying lattice defects with flow-based sampling.
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