Improving accuracy of tree-tensor network approach by optimization of network structure
Toshiya Hikihara, Hiroshi Ueda, Kouichi Okunishi, Kenji Harada, Tomotoshi Nishino

TL;DR
This paper enhances the accuracy of tree tensor network methods for quantum many-body systems by optimizing network structure, emphasizing the importance of updating schemes and initial configurations for different models.
Contribution
It introduces an improved structural optimization algorithm for TTNs and analyzes its effectiveness across various quantum models with different updating schemes.
Findings
Stochastic updates improve accuracy for the XY model.
Initial TTN choice affects Richardson model results.
Proper updating schemes are crucial for optimal performance.
Abstract
Numerical methods based on tensor networks have been extensively explored in the research of quantum many-body systems in recent years. It has been recognized that the ability of tensor networks to describe a quantum many-body state crucially depends on the spatial structure of the network. In the previous work [Hikihara et al., Phys. Rev. Res. 5, 013031 (2023)], we proposed an algorithm based on tree tensor networks (TTNs) that automatically optimizes the structure of TTN according to the spatial profile of entanglement in the state of interest. In this paper, we apply the algorithm to the random XY-exchange model under random magnetic fields and the Richardson model in order to analyze how the performance of the algorithm depends on the detailed updating schemes of the structural optimization. We then find that for the random XY model, on the one hand, the algorithm achieves improved…
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Taxonomy
TopicsComputational Physics and Python Applications
