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Variational density matrix optimization using semidefinite programming

Abstract

We discuss how semidefinite programming can be used to determine the second-order density matrix directly through a variational optimization. We show how the problem of characterizing a physical or N -representable density matrix leads to matrix-positivity constraints on the density matrix. We then formulate this in a standard semidefinite programming form, after which two interior point methods are discussed to solve the SDP. As an example we show the results of an application of the method on the isoelectronic series of Beryllium.

Authors

Verstichel B; van Aggelen H; Van Neck D; Ayers PW; Bultinck P

Publication date

June 18, 2010

DOI

10.48550/arxiv.1006.3721

Preprint server

arXiv
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