2024
DOI: 10.1103/physreve.109.054305
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Network science: Ising states of matter

Hanlin Sun,
Rajat Kumar Panda,
Roberto Verdel
et al.

Abstract: Network science provides very powerful tools for extracting information from interacting data. Although recently the unsupervised detection of phases of matter using machine learning has raised significant interest, the full prediction power of network science has not yet been systematically explored in this context. Here we fill this gap by providing an in-depth statistical, combinatorial, geometrical, and topological characterization of 2D Ising snapshot networks (IsingNets) extracted from Monte Carlo simula… Show more

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Cited by 4 publications
(1 citation statement)
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“…The method was demonstrated by comparing the outcomes of two experiments as well as an experiment and a simulation. An interesting research question arises from the comparisons of these networks with the recently introduced IsingNets networks [261] constructed from configuration snapshots of classical Ising models. In particular this comparison will be key to determine the exclusive signature of quantumness in the quantum wave function networks.…”
Section: Network Description Of Experimental Data Setsmentioning
confidence: 99%
“…The method was demonstrated by comparing the outcomes of two experiments as well as an experiment and a simulation. An interesting research question arises from the comparisons of these networks with the recently introduced IsingNets networks [261] constructed from configuration snapshots of classical Ising models. In particular this comparison will be key to determine the exclusive signature of quantumness in the quantum wave function networks.…”
Section: Network Description Of Experimental Data Setsmentioning
confidence: 99%