Density matrix minimization with ℓ1 regularization

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Abstract

We propose a convex variational principle to find sparse representation of low-lying eigenspace of symmetric matrices. In the context of electronic structure calculation, this corresponds to a sparse density matrix minimization algorithm with ℓ1 regularization. The minimization problem can be efficiently solved by a split Bregman iteration type algorithm. We further prove that from any initial condition, the algorithm converges to a minimizer of the variational principle.

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Lai, R., Lu, J., & Osher, S. (2015). Density matrix minimization with ℓ1 regularization. Communications in Mathematical Sciences, 13(8), 2097–2117. https://doi.org/10.4310/CMS.2015.v13.n8.a6

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