Superposed Random Spin Tensor Networks and their Holographic Properties
- URL: http://arxiv.org/abs/2205.09761v1
- Date: Thu, 19 May 2022 12:24:57 GMT
- Title: Superposed Random Spin Tensor Networks and their Holographic Properties
- Authors: Simon Langenscheidt
- Abstract summary: We study boundary-to-boundary holography in a class of spin network states defined by analogy to projected entangled pair states (PEPS)
We consider superpositions of states corresponding to well-defined, discrete geometries on a graph.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We study criteria for and properties of boundary-to-boundary holography in a
class of spin network states defined by analogy to projected entangled pair
states (PEPS). In particular, we consider superpositions of states
corresponding to well-defined, discrete geometries on a graph. By applying
random tensor averaging techniques, we map entropy calculations to a random
Ising model on the same graph, with distribution of couplings determined by the
relative sizes of the involved geometries. The superposition of tensor network
states with variable bond dimension used here presents a picture of a genuine
quantum sum over geometric backgrounds. We find that, whenever each individual
geometry produces an isometric mapping of a fixed boundary region C to its
complement, then their superposition does so iff the relative weight going into
each geometry is inversely proportional to its size. Additionally, we calculate
average and variance of the area of the given boundary region and find that the
average is bounded from below and above by the mean and sum of the individual
areas, respectively. Finally, we give an outlook on possible extensions to our
program and highlight conceptual limitations to implementing these.
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