Loop optimization for tensor network renormalization

ORAL

Abstract

We introduce a tensor renormalization group scheme for coarse-graining a two-dimensional tensor network, which can be successfully applied to both classical and quantum systems on and off criticality. The key idea of our scheme is to deform a 2D tensor network into small loops and then optimize tensors on each loop. In this way we remove short-range entanglement at each iteration step, and significantly improve the accuracy and stability of the renormalization flow. We demonstrate our algorithm in the classical Ising model and a frustrated 2D quantum model.

*NSF Grant No. DMR-1005541 and NSFC 11274192, BMO Financial Group, John Templeton Foundation, Government of Canada through Industry Canada, Province of Ontario through the Ministry of Economic Development & Innovation.

Authors

  • Shuo Yang

    • Perimeter Institute for Theoretical Physics
  • Zheng-Cheng Gu

    • Chinese University of Hong Kong
    • The Chinese University of Hong Kong
  • Xiao-Gang Wen

    • Massachusetts Institute of Technology
    • Massachusetts Inst of Tech-MIT