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Resummation-based Quantum Monte Carlo for Entanglement Entropy Computation

Strongly Correlated Electrons 2024-09-20 v6 Quantum Gases Quantum Physics

Abstract

Based on the recently developed resummation-based quantum Monte Carlo method for the SU(NN) spin and loop-gas models, we develop a new algorithm, dubbed ResumEE, to compute the entanglement entropy (EE) with greatly enhanced efficiency. Our ResumEE exponentially speeds up the computation of the exponentially small value of the eS(2)\langle e^{-S^{(2)}}\rangle, where S(2)S^{(2)} is the 2nd order R\'enyi EE, such that the S(2)S^{(2)} for a generic 2D quantum SU(NN) spin models can be readily computed with high accuracy. We benchmark our algorithm with the previously proposed estimators of S(2)S^{(2)} on 1D and 2D SU(22) Heisenberg spin systems to reveal its superior performance and then use it to detect the entanglement scaling data of the N\'eel-to-VBS transition on 2D SU(NN) Heisenberg model with continuously varying NN. Our ResumEE algorithm is efficient for precisely evaluating the entanglement entropy of SU(NN) spin models with continuous NN and reliable access to the conformal field theory data for the highly entangled quantum matter.

Keywords

Cite

@article{arxiv.2310.01490,
  title  = {Resummation-based Quantum Monte Carlo for Entanglement Entropy Computation},
  author = {Menghan Song and Ting-Tung Wang and Zi Yang Meng},
  journal= {arXiv preprint arXiv:2310.01490},
  year   = {2024}
}

Comments

11 pages, 9 figures

R2 v1 2026-06-28T12:38:41.505Z