Riemannian Preconditioning
Accepted version
Peer-reviewed
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Abstract
This paper exploits a basic connection between sequential quadratic programming and Riemannian gradient optimization to address the general question of selecting a metric in Riemannian optimization, in particular when the Riemannian structure is sought on a quotient manifold. The proposed method is shown to be particularly insightful and efficient in quadratic optimization with orthogonality and/or rank constraints, which covers most current applications of Riemannian optimization in matrix manifolds.
Description
Journal Title
SIAM Journal on Optimization
Conference Name
Journal ISSN
1052-6234
1095-7189
1095-7189
Volume Title
26
Publisher
Society for Industrial & Applied Mathematics (SIAM)
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Sponsorship
Belgium Science Policy Office, FNRS (Belgium)
