Neural Quantum State Study of Fracton Models
- URL: http://arxiv.org/abs/2406.11677v1
- Date: Mon, 17 Jun 2024 15:58:09 GMT
- Title: Neural Quantum State Study of Fracton Models
- Authors: Marc Machaczek, Lode Pollet, Ke Liu,
- Abstract summary: Fracton models host unconventional topological orders in three and higher dimensions.
We establish neural quantum states (NQS) as new tools to study phase transitions in these models.
Our work demonstrates the remarkable potential of NQS in studying complicated three-dimensional problems.
- Score: 3.8068573698649826
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Fracton models host unconventional topological orders in three and higher dimensions and provide promising candidates for quantum memory platforms. Understanding their robustness against quantum fluctuations is an important task but also poses great challenges due to the lack of efficient numerical tools. In this work, we establish neural quantum states (NQS) as new tools to study phase transitions in these models. Exact and efficient parametrizations are derived for three prototypical fracton codes - the checkerboard and X-cube model, as well as Haah's code - both in terms of a restricted Boltzmann machine (RBM) and a correlation-enhanced RBM. We then adapt the correlation-enhanced RBM architecture to a perturbed checkerboard model and reveal its strong first-order phase transition between the fracton phase and a trivial field-polarizing phase. To this end, we simulate this highly entangled system on lattices of up to 512 qubits with high accuracy, representing a cutting-edge application of variational neural-network methods. Our work demonstrates the remarkable potential of NQS in studying complicated three-dimensional problems and highlights physics-oriented constructions of NQS architectures.
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