Exploiting hidden low-rank structures in quantum field theories
- 日時
- 2025年2月24日(月)13:00 - 14:30 (JST)
- 講演者
-
- Hiroshi Shinaoka (埼玉大学)
- 会場
- via Zoom
- Hong Kong University Science and Technology
- 言語
- 英語
- ホスト
- Seishiro Ono
Tensor networks are a powerful tool for compressing wave functions and density matrices of quantum systems in physics. Recent developments have shown that tensor network techniques can efficiently compress many functions beyond these traditional objects. Notable examples include the solutions to turbulence in Navier–Stokes equations [1] and the computation of Feynman diagrams [2,3]. These advancements have heralded a new era in the use of tensor networks for expediting the resolution of various complex equations in physics. This talk will provide an overview of our work utilizing tensor networks for computations based on quantum field theories.
First, we will introduce the Quantics/quantized Tensor Train (QTT) representation [3,4] for compressing the space-time dependence of correlation functions in quantum systems [5], leveraging inherent length-scale separation for efficient representation.
Second, we will present a robust tool named "Quantics Tensor Cross Interpolation" [6], which learns a quantics low-rank representation of a given function. Applications include the computation of Brillouin zone integrals [6] and integration of complex self-energy Feynman diagrams for multiorbital electron-phonon impurity models [7].
Finally, we will introduce new algorithms [8] and open-source libraries [9] for tensor cross interpolation.
References
- N. Gourianov et al., A quantum-inspired approach to exploit turbulence structures, Nat. Comput. Sci. 2, 30 (2022)., doi: 10.1038/s43588-021-00181-1
- Y. N. Fernandez et al, Learning Feynman Diagrams with Tensor Trains, PRX 12, 041018 (2022)., doi: 10.1103/PhysRevX.12.041018
- I. V. Oseledets, Dokl. Math. 80, 653 (2009)
- B. N. Khoromskij, Constr. Approx. 34, 257 (2011)
- H. Shinaoka et al.,, Multiscale Space-Time Ansatz for Correlation Functions of Quantum Systems Based on Quantics Tensor Trains, Phys. Rev. X 13, 021015 (2023), doi: 10.1103/PhysRevX.13.021015
- M. K. Ritter, Y. N. Fernández, M. Wallerberger, J. von Delft, H. Shinaoka and X. Waintal, Quantics Tensor Cross Interpolation for High-Resolution Parsimonious Representations of Multivariate Functions, Phys. Rev. Lett. 132, 056501 (2024), doi: 10.1103/PhysRevLett.132.056501
- H. Ishida, N. Okada, S. Hoshino, H. Shinaoka, Low-rank quantics tensor train representations of Feynman diagrams for multiorbital electron-phonon models, arXiv: 2405.06440
- Y. N. Fernández, M. K. Ritter, M. Jeannin, J.-W. Li, T. Kloss, T. Louvet, S. Terasaki, O. Parcollet, J. von Delft, H. Shinaoka and X. Waintal, Learning tensor networks with tensor cross interpolation: new algorithms and libraries, arXiv: 2407.02454
- tensor4all
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