Holographic Representation of One-Dimensional Many-Body Quantum States via Isometric Tensor Networks
- URL: http://arxiv.org/abs/2512.11967v1
- Date: Fri, 12 Dec 2025 19:00:04 GMT
- Title: Holographic Representation of One-Dimensional Many-Body Quantum States via Isometric Tensor Networks
- Authors: Kaito Kobayashi, Benjamin Sappler, Frank Pollmann,
- Abstract summary: Isometric tensor network states (isoTNS) allow for efficient and accurate simulations of higher-dimensional quantum systems.<n>We introduce a holographic isoTNS ansatz: a (1+1)-dimensional lattice of tensors where the horizontal axis encodes physical space and an auxiliary "holographic" axis boosts expressivity.
- Score: 0.003748389192021574
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Isometric tensor network states (isoTNS) allow for efficient and accurate simulations of higher-dimensional quantum systems by enforcing an isometric structure. We bring this idea back to one dimension by introducing a holographic isoTNS ansatz: a (1+1)-dimensional lattice of isometric tensors where the horizontal axis encodes physical space and an auxiliary "holographic" axis boosts expressivity. Despite the enlarged geometry, contractions and local updates remain computationally efficient due to isometric constraints. We investigate this ansatz and benchmark it in comparison to matrix product states (MPS). First, we show that randomly initialized holographic isoTNS typically display volume-law entanglement even at modest bond dimension, surpassing the representational limits of MPS and related ansätze. Second, through analytic constructions and variational optimization, we demonstrate that holographic isoTNS can faithfully represent arbitrary fermionic Gaussian states, Clifford states, and certain short-time-evolved states under local evolution -- a family of states that is highly entangled but low in complexity. Third, to exploit this expressivity in broad situations, we implement a time-evolving block decimation (TEBD) algorithm on holographic isoTNS. While the method remains efficient and scalable, error accumulation over TEBD sweeps suppresses entanglement and leads to rapid deviations from exact dynamics. Overall, holographic isoTNS broaden the reach of tensor-network methods, opening new avenues to study physics in the volume-law regime.
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