Mathematical wave functions
Tensor networks or tensor network states are a class of variational wave functions used in the study of many-body quantum systems[ 1] and fluids.[ 2] [ 3] Tensor networks extend one-dimensional matrix product states to higher dimensions while preserving some of their useful mathematical properties.[ 4]
Two different tensor network representations of a single 7-indexed tensor (both networks can be contracted to it with 7 free indices remaining). The bottom one can be derived from the top one by performing contraction on the three 3-indexed tensors (in yellow) and merging them together.
The wave function is encoded as a tensor contraction of a network of individual tensors .[ 5] The structure of the individual tensors can impose global symmetries on the wave function (such as antisymmetry under exchange of fermions ) or restrict the wave function to specific quantum numbers , like total charge , angular momentum , or spin . It is also possible to derive strict bounds on quantities like entanglement and correlation length using the mathematical structure of the tensor network.[ 6] This has made tensor networks useful in theoretical studies of quantum information in many-body systems . They have also proved useful in variational studies of ground states , excited states , and dynamics of strongly correlated many-body systems .[ 7]
^ Orús, Román (5 August 2019). "Tensor networks for complex quantum systems" . Nature Reviews Physics . 1 (9): 538–550. arXiv :1812.04011 . Bibcode :2019NatRP...1..538O . doi :10.1038/s42254-019-0086-7 . ISSN 2522-5820 . S2CID 118989751 .
^ Gourianov, Nikita; Lubasch, Michael; Dolgov, Sergey; van den Berg, Quincy Y.; Babaee, Hessam; Givi, Peyman; Kiffner, Martin; Jaksch, Dieter (2022-01-01). "A quantum-inspired approach to exploit turbulence structures" . Nature Computational Science . 2 (1): 30–37. doi :10.1038/s43588-021-00181-1 . ISSN 2662-8457 . PMID 38177703 .
^ Gourianov, Nikita; Givi, Peyman; Jaksch, Dieter; Pope, Stephen B. (2024). "Tensor networks enable the calculation of turbulence probability distributions". arXiv :2407.09169 [physics.flu-dyn ].
^ Orús, Román (2014-10-01). "A practical introduction to tensor networks: Matrix product states and projected entangled pair states" . Annals of Physics . 349 : 117–158. arXiv :1306.2164 . Bibcode :2014AnPhy.349..117O . doi :10.1016/j.aop.2014.06.013 . ISSN 0003-4916 . S2CID 118349602 .
^ Biamonte, Jacob; Bergholm, Ville (2017-07-31). "Tensor Networks in a Nutshell". arXiv :1708.00006 [quant-ph ].
^ Verstraete, F.; Wolf, M. M.; Perez-Garcia, D.; Cirac, J. I. (2006-06-06). "Criticality, the Area Law, and the Computational Power of Projected Entangled Pair States" . Physical Review Letters . 96 (22): 220601. arXiv :quant-ph/0601075 . Bibcode :2006PhRvL..96v0601V . doi :10.1103/PhysRevLett.96.220601 . hdl :1854/LU-8590963 . PMID 16803296 . S2CID 119396305 .
^ Montangero, Simone (28 November 2018). Introduction to tensor network methods : numerical simulations of low-dimensional many-body quantum systems . Cham, Switzerland. ISBN 978-3-030-01409-4 . OCLC 1076573498 . {{cite book }}
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