Introduces representability-aware neural networks for predicting and variationally optimizing 2-RDMs, achieving high accuracy and competitive energies versus exact diagonalization in a fractional Chern insulator model of twisted bilayer MoTe2.
An architecture plot of the framework can be seen in Fig
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Representability-Aware Neural Networks for Reduced Density Matrices: Application to Fractional Chern Insulators
Introduces representability-aware neural networks for predicting and variationally optimizing 2-RDMs, achieving high accuracy and competitive energies versus exact diagonalization in a fractional Chern insulator model of twisted bilayer MoTe2.