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J1-J2 fractal studied by multi-recursion tensor-network method (2107.11406v2)

Published 23 Jul 2021 in cond-mat.stat-mech

Abstract: We generalize a tensor-network algorithm to study thermodynamic properties of self-similar spin lattices constructed on a square-lattice frame with two types of couplings, $J_{1}{}$ and $J_{2}{}$, chosen to transform a regular square lattice ($J_{1}{} = J_{2}{}$) onto a fractal lattice if decreasing $J_{2}{}$ to zero (the fractal fully reconstructs when $J_{2}{} = 0$). We modified the Higher-Order Tensor Renormalization Group (HOTRG) algorithm for this purpose. Single-site measurements are performed by means of so-called impurity tensors. So far, only a single local tensor and uniform extension-contraction relations have been considered in HOTRG. We introduce ten independent local tensors, each being extended and contracted by fifteen different recursion relations. We applied the Ising model to the $J_{1}{}-J_{2}{}$ planar fractal whose Hausdorff dimension at $J_{2}{} = 0$ is $d{(H)} = \ln 12 / \ln 4 \approx 1.792$. The generalized tensor-network algorithm is applicable to a wide range of fractal patterns and is suitable for models without translational invariance.

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