Tensor-Network Population Annealing
Abstract
We propose a hybrid sampling method, tensor-network population annealing (TNPA), which combines tensor-network (TN) initialization with population annealing (PA). We apply this method to the two-dimensional Edwards-Anderson Ising spin glass. The approach is motivated by the limitations of existing methods: TN-based samplers can become numerically unstable in frustrated spin systems at low temperatures, whereas conventional PA requires a long annealing schedule when started from the high-temperature limit. In TNPA, TN contractions are used only within a reliable temperature range to generate initial configurations that are close to the equilibrium distribution. The subsequent low-temperature equilibration is then carried out by PA. To stabilize the initialization process, we introduce a diagnostic based on the effective sample size that adaptively selects the initialization temperature. The proposed framework provides a practical and physically motivated route to low-temperature sampling by combining the complementary strengths of TN and PA.
Keywords
Cite
@article{arxiv.2604.11155,
title = {Tensor-Network Population Annealing},
author = {Takumi Oshima and Yuma Ichikawa and Koji Hukushima},
journal= {arXiv preprint arXiv:2604.11155},
year = {2026}
}
Comments
14 pages, 10 figures