- For nonrobust estimation, nlinfit uses the Levenberg-Marquardt nonlinear least squares algorithm [1].
- For robust estimation, nlinfit uses the algorithm of Iteratively Reweighted Least Squares ([2], [3]). At each iteration, the robust weights are recalculated based on each observation’s residual from the previous iteration. These weights downweight outliers, so that their influence on the fit is decreased. Iterations continue until the weights converge.
details of fitnlm and statset
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B. Carol
on 18 Jul 2025
Commented: Walter Roberson
on 18 Jul 2025
I have three questions regarding fitnlm
- Where is the Jacobian? I set it 'on' in statset and the documentation says it will appear as a "second output" but I don't see where to find it
- is there a way to set lower and upper limits to the coefficients in fitnlm? My model will converge better with lower & upper limits.
- What is the algorithm used in fitnlm -- Levenberg-Marquardt or Trust-Region?
Code is
modelfun = @(b,X)exp(b(1))./(exp(b(2)./X)-1)./X.^5;
opts = statset('Display','iter','TolFun',1e-10,'RobustWgtFun','bisquare',...
'Tune',4.685,'Display','final','MaxFunEvals',600,'MaxIter',1000,...
'TolX',1e-6,'Jacobian','on','FunValCheck','on');
beta0 = [ 4.2417 5.1846 ];
[mdl] = fitnlm(X,Y,modelfun,beta0,'Options',opts);
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Accepted Answer
Walter Roberson
on 18 Jul 2025
1) The 'Jacobian' statset() option is not relevant for fitnlm()
2) There is no way to set upper or lower limits.
3) fitnlm() uses the same algorithm as nlinfit(). In turn:
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