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Projected Density Matrix Embedding Theory with Applications to the Two-Dimensional Hubbard Model (1905.00886v2)

Published 2 May 2019 in physics.chem-ph and cond-mat.str-el

Abstract: Density matrix embedding theory (DMET) is a quantum embedding theory for strongly correlated systems. From a computational perspective, one bottleneck in DMET is the optimization of the correlation potential to achieve self-consistency, especially for heterogeneous systems of large size. We propose a new method, called projected density matrix embedding theory (p-DMET), which achieves self-consistency without needing to optimize a correlation potential. We demonstrate the performance of p-DMET on the two-dimensional Hubbard model.

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