English

Tensor Network Methods for Extracting CFT Data from Fixed-Point Tensors and Defect Coarse Graining

Statistical Mechanics 2024-02-06 v3

Abstract

We present a comprehensive study on the extraction of CFT data using tensor network methods, specially, from the fixed-point tensor of the linearized tensor renormalization group (lTRG) for the 2D classical Ising model near the critical temperature. Utilizing two different methods, we extract operator scaling dimensions and operator-product-expansion (OPE) coefficients by introducing defects on the lattice and by employing the fixed-point tensor. We also explore the effects of point-like defects in the lattice on the coarse-graining process. We find that there is a correspondence between coarse-grained defect tensors and conformal states obtained from lTRG fixed-point equation. We also analyze the capabilities and limitations of our proposed coarse-graining scheme for tensor networks with point-like defects, which includes graph independent local truncation (GILT) and higher-order tensor renormalization group (HOTRG). Our results provide a better understanding of the capacity and limitations of the tenor renormalization group scheme in coarse-graining defect tensors, and we show that GILT+HOTRG can be used to give accurate two- and four-point functions under specific conditions. We also find that employing the minimal canonical form further improves the stability of the RG flow.

Keywords

Cite

@article{arxiv.2305.09899,
  title  = {Tensor Network Methods for Extracting CFT Data from Fixed-Point Tensors and Defect Coarse Graining},
  author = {Wenhan Guo and Tzu-Chieh Wei},
  journal= {arXiv preprint arXiv:2305.09899},
  year   = {2024}
}

Comments

36 pages, 30 figures

R2 v1 2026-06-28T10:36:37.030Z