How to find uncertainties of estimated parameters in Levenberg- Marquardt algorithm
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Hello I have used Levenberg-Marquardt algorithm in 3 parameter problem but I unable to estimate uncertainties associated with it, Please help me in this regard
1 Kommentar
Chris Martin
am 6 Nov. 2015
Antworten (2)
Torsten
am 4 Nov. 2015
1 Stimme
If you have the statistics toolbox, use nlinfit together with nlparci and nlpredci.
Best wishes
Torsten.
4 Kommentare
Chris Martin
am 4 Nov. 2015
Torsten
am 4 Nov. 2015
Then you will have to consult the literature cited for nlparci and nlpredci on how confidence intervals for the parameters are to be computed.
See e.g.
Best wishes
Torsten.
Chris Martin
am 5 Nov. 2015
Torsten
am 5 Nov. 2015
Just wanted to give a link to this book:
Best wishes
Torsten.
chris
am 9 Jul. 2025
0 Stimmen
You can use Laplace's approximation.
After Levenberg Marquardt (LM) has converged, take the (negative of the) Hessian at that point. This is equal to the precision matrix (inverse of covariance matrix) for a multivariate Gaussian distribution over your parameters.
The location parameter of this distribution is of course just the solution provided by LM.
Note that you do not want to approximate the Hessian with the Jacobian!
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