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NAMColloquium
Levenberg Marquardt Algorithms for Nonlinear Least Squares Minimization for Solving Inverse Problems
24.10.2023, 17:15 - 19:00
Speaker:Prof. Vyachslav Kungurtsev, Technische Universität Prag
Location:Institut für Numerische und Angewandte Mathematik, Lotzestraße 16-18MN 55Gras Geo Map
Organizer:Institut für Numerische und Angewandte Mathematik
Details:
Levenberg Marquardt (LM) algorithms are a class of methods that add a regularization term to a Gauss Newton iteration to promote better convergence properties. This talk presents three works on this class of methods. The first discusses a new LM algorithm that simultaneously achieves all of state of the art convergence guarantees for unconstrained problems. Stochastic LM is discussed next, which is an algorithm to handle noisy data. Convergence is proven with respect to an expected stopping time for approximate stationarity. Finally, a LM method is presented to handle nonlinear equality constraints, with numerical examples from large scale inverse problems in PDEs.
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Type:Colloquium
Language:English
Category:Research
Host:Prof. Dr. Russell Luke
Contact:Nadine Kapusniak0551/39 24195n.kapusniak@math.uni-goettingen.de
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