Renormalization group on a triad network
Abstract
We propose a new renormalization scheme of tensor networks made only of third order tensors. The isometry used for coarse-graining the network can be prepared at an O(D6) computational cost in any d dimension (d 2), where D is the truncated bond dimension of tensors. Although it is reduced to O(D5) if a randomized singular value decomposition is employed, the total cost is O(Dd+3) because the contraction part for creating a renormalized tensor with isometries has Dd+3 multiplications. We test our method in three dimensional Ising model and find that the numerical results are obtained for large Ds with reasonable errors.
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