Title:
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A hybrid method for nonlinear least squares that uses quasi-Newton updates applied to an approximation of the Jacobian matrix (English) |
Author:
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Lukšan, Ladislav |
Author:
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Vlček, Jan |
Language:
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English |
Journal:
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Programs and Algorithms of Numerical Mathematics |
Volume:
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Proceedings of Seminar. Hejnice, June 24-29, 2018 |
Issue:
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2018 |
Year:
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|
Pages:
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99-106 |
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Category:
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math |
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Summary:
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In this contribution, we propose a new hybrid method for minimization of nonlinear least squares. This method is based on quasi-Newton updates, applied to an approximation $A$ of the Jacobian matrix $J$, such that $A^T f = J^T f$. This property allows us to solve a linear least squares problem, minimizing $\|A d + f\|$ instead of solving the normal equation $A^T A d + J^T f = 0$, where $d \in R^n$ is the required direction vector. Computational experiments confirm the efficiency of the new method. (English) |
Keyword:
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nonlinear least squares |
Keyword:
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hybrid methods |
Keyword:
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trust-region methods |
Keyword:
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quasi-Newton methods |
Keyword:
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numerical algorithms |
Keyword:
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numerical experiments |
MSC:
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65F30 |
MSC:
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65K10 |
DOI:
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10.21136/panm.2018.11 |
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Date available:
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2019-04-29T13:37:03Z |
Last updated:
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2023-06-05 |
Stable URL:
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http://hdl.handle.net/10338.dmlcz/703066 |
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