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Incorporating Dynamic Mean-Field Theory into Diagrammatic Monte Carlo (1012.5808v1)

Published 28 Dec 2010 in cond-mat.stat-mech, cond-mat.mes-hall, and cond-mat.str-el

Abstract: The bold diagrammatic Monte Carlo (BDMC) method performs an unbiased sampling of Feynman's diagrammatic series using skeleton diagrams. For lattice models the efficiency of BDMC can be dramatically improved by incorporating dynamic mean-field theory (DMFT) solutions into renormalized propagators. From the DMFT perspective, combining it with BDCM leads to an unbiased method with well-defined accuracy. We illustrate the power of this approach by computing the single-particle propagator (and thus the density of states) in the non-perturbative regime of the Anderson localization problem, where a gain of the order of $104$ is achieved with respect to conventional BDMC in terms of convergence to the exact answer.

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