Algorithms for tensor network renormalization
Abstract
We discuss in detail algorithms for implementing tensor network renormalization (TNR) for the study of classical statistical and quantum many-body systems. Firstly, we recall established techniques for how the partition function of a 2D classical many-body system or the Euclidean path integral of a 1D quantum system can be represented as a network of tensors, before describing how TNR can be implemented to efficiently contract the network via a sequence of coarse-graining transformations. The efficacy of the TNR approach is then benchmarked for the 2D classical statistical and 1D quantum Ising models; in particular the ability of TNR to maintain a high level of accuracy over sustained coarse-graining transformations, even at a critical point, is demonstrated.
Cite
@article{arxiv.1509.07484,
title = {Algorithms for tensor network renormalization},
author = {Glen Evenbly},
journal= {arXiv preprint arXiv:1509.07484},
year = {2017}
}
Comments
Main text: 15 pages, 16 figures. Appendices: 6 pages, 8 figures