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A Riemannian symmetric rank-one trust-region method
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Document type | Article de périodique (Journal article) – Article de recherche |
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Access type | Accès restreint |
Publication date | 2014 |
Language | Anglais |
Journal information | "Mathematical Programming" - Vol. 150, no. 2, p. 179-2016 (2014) |
Peer reviewed | yes |
Publisher | Springer ((Germany) Heidelberg) |
issn | 0025-5610 |
e-issn | 1436-4646 |
Publication status | Publié |
Affiliation | UCL - SST/ICTM/INMA - Pôle en ingénierie mathématique |
Links |
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Bibliographic reference | Huang, Wen ; Absil, Pierre-Antoine ; Gallivan, Kyle A.. A Riemannian symmetric rank-one trust-region method. In: Mathematical Programming, Vol. 150, no. 2, p. 179-2016 (2014) |
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Permanent URL | http://hdl.handle.net/2078.1/139302 |