Tree tensor network impurity solver based on Cayley-tree mapping
Abstract
We introduce a tree tensor network (TTN) impurity solver that enables highly efficient and accurate real-time simulations of quantum impurity models. By decomposing a noninteracting bath Hamiltonian into a Cayley tree, the method provides a tensor network representation that naturally captures the multiscale entanglement structure intrinsic to impurity-bath systems. This geometry differs from conventional chain-based mappings and yields a substantial reduction of entanglement, allowing accurate ground-state properties and long-time dynamics to be captured at significantly lower bond dimensions. Benchmark calculations for the single-impurity Anderson model demonstrate that the TTN solver achieves markedly enhanced resolution of real-frequency spectral functions, without invoking analytic continuation. This impurity solver provides a balanced, scale-uniform description of impurity physics and offers a versatile approach for real-time dynamical mean-field theory and related applications involving quantum impurity models.
Keywords
Cite
@article{arxiv.2601.17718,
title = {Tree tensor network impurity solver based on Cayley-tree mapping},
author = {Bo Zhan and Jia-Lin Chen and Zhen Fan and Tao Xiang},
journal= {arXiv preprint arXiv:2601.17718},
year = {2026}
}
Comments
Matches the version published in PRB