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Tensor Renormalization Group Algorithms with a Projective Truncation Method (1809.08030v2)

Published 21 Sep 2018 in cond-mat.stat-mech, hep-lat, and physics.comp-ph

Abstract: We apply the projective truncation technique to the tensor renormalization group (TRG) algorithm in order to reduce the computational cost from $O(\chi6)$ to $O(\chi5)$, where $\chi$ is the bond dimension, and propose three kinds of algorithms for demonstration. On the other hand, the technique causes a systematic error due to the incompleteness of a projector composed of isometries, and in addition requires iteration steps to determine the isometries. Nevertheless, we find that the accuracy of the free energy for the Ising model on a square lattice is recovered to the level of TRG with a few iteration steps even at the critical temperature for $\chi$ = 32, 48, and 64.

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