One of the most important challenges in density functional theory (DFT) is the proper description of fractional charge systems relating to the self-interaction error (SIE). Traditionally, the SIE has been formulated as a one-electron problem, which has been addressed in several recent functionals. However, these recent one-electron SIE-free functionals, while greatly improving the description of thermochemistry and reaction barriers in general, still exhibit many of the difficulties associated with SIE. Thus we emphasize the need to surpass this limit and shed light on the many-electron SIE. After identifying the sufficient condition for functionals to be free from SIE, we focus on the symptoms and investigate the performance of most popular functionals. We show that these functionals suffer from many-electron SIE. Finally, we give a SIE classification of density functionals.
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28 November 2006
Rapid Communication|
November 28 2006
Many-electron self-interaction error in approximate density functionals
Paula Mori-Sánchez;
Paula Mori-Sánchez
Department of Chemistry,
Duke University
, Durham, North Carolina 27708
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Aron J. Cohen;
Aron J. Cohen
Department of Chemistry,
Duke University
, Durham, North Carolina 27708
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Weitao Yang
Weitao Yang
Department of Chemistry,
Duke University
, Durham, North Carolina 27708
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J. Chem. Phys. 125, 201102 (2006)
Article history
Received:
October 05 2006
Accepted:
November 08 2006
Citation
Paula Mori-Sánchez, Aron J. Cohen, Weitao Yang; Many-electron self-interaction error in approximate density functionals. J. Chem. Phys. 28 November 2006; 125 (20): 201102. https://doi.org/10.1063/1.2403848
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