How to obtain the standard deviation of the fitting parameters?

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I have a question about how to obtain the standard deviation of the fitting parameters according to the following program codes.
x=[0 5 10 15 20 30 45 60 75 90 105 120];
y=[0 3.87 4.62 4.98 5.21 5.40 5.45 5.50 5.51 5.52 5.54 5.53];
plot(x,y,'bo');
hold on
pause(0.1);
beta0=[39,0.002];
% syms n t
% fun=@(beta,t) beta(1)*(1-6/(pi^2)*symsum((1./n.^2).*exp(-beta(2)*(n.^2).*t),n,1,Inf));
% betafit = nlinfit(x,y,fun,beta0);
beta1=beta0;
delta = 1e-8; % desired objective accuracy
R0=Inf; % initial objective function
for K=1:10000
fun=@(beta,t) beta(1)*(1-6/(pi^2)*sum((1./(1:K)'.^2).*exp(-beta(2)*((1:K)'.^2).*t),1));
[betafit,R] = nlinfit(x,y,fun,beta1);
R = sum(R.^2);
if abs(R0-R)<delta
break;
end
beta1=betafit;
R0 = R;
end
plot(x,fun(betafit,x),'.-r');
xlabel('x');
ylabel('y');
legend('experiment','model');
title(strcat('\beta=[',num2str(betafit),'];----stopped at--','K=',num2str(K)));

Respuesta aceptada

Star Strider
Star Strider el 21 de Mzo. de 2024
The most meaningful measure of the parameters is the confidence interval. You could possibly recover some information from the covariance matrix ‘CovB’, however that would take some effort.
x=[0 5 10 15 20 30 45 60 75 90 105 120];
y=[0 3.87 4.62 4.98 5.21 5.40 5.45 5.50 5.51 5.52 5.54 5.53];
plot(x,y,'bo');
hold on
pause(0.1);
beta0=[39,0.002];
% syms n t
% fun=@(beta,t) beta(1)*(1-6/(pi^2)*symsum((1./n.^2).*exp(-beta(2)*(n.^2).*t),n,1,Inf));
% betafit = nlinfit(x,y,fun,beta0);
beta1=beta0;
delta = 1e-8; % desired objective accuracy
R0=Inf; % initial objective function
% K=1:10000;
for K=1:10000
fun=@(beta,t) beta(1)*(1-6/(pi^2)*sum((1./(1:K)'.^2).*exp(-beta(2)*((1:K)'.^2).*t),1));
[betafit,Rv,J,CovB,MSE] = nlinfit(x,y,fun,beta1);
R = sum(Rv.^2);
if abs(R0-R)<delta
break;
end
beta1=betafit;
R0 = R;
end
fprintf('\nbeta = %8.4f\nbeta = %8.4f\n\n',beta1)
beta = 5.4900 beta = 0.1374
CovMtx = CovB
CovMtx = 2×2
1.0e-03 * 0.4686 -0.0534 -0.0534 0.0206
ci = nlparci(beta1,Rv,'Covar',CovB)
ci = 2×2
5.4418 5.5382 0.1273 0.1475
plot(x,fun(betafit,x),'.-r');
xlabel('x');
ylabel('y');
legend('experiment','model', 'Location','best');
title(strcat('\beta=[',num2str(betafit),'];----stopped at--','K=',num2str(K)));
.
  6 comentarios
Qili Hu
Qili Hu el 22 de Mzo. de 2024
Dear Strider
According to the codes you write, I add them to my codes. But, it do not work during running. When I change sigma=((ci-beta)./tci)*sqrt(12) to sigma=((ci-beta1)./tci)*sqrt(12), the running result is not consistent with you. It seems that beta do not appear in the codes. So, I hope you can help me to check the following codes. Thank you very much.
x=[0 5 10 15 20 30 45 60 75 90 105 120];
y=[0 3.87 4.62 4.98 5.21 5.40 5.45 5.50 5.51 5.52 5.54 5.50];
plot(x,y,'ro','MarkerFaceColor','r');
hold on
beta0=[5,0.1];
beta1=beta0;
delta=1e-8;
R0=Inf;
for n=1:15000
fun=@(beta,t) beta(1)*(1-6/(pi^2)*sum((1./(1:n)'.^2).*exp(-beta(2)*((1:n)'.^2).*t),1));
[betafit,Rv,J,CovB,MSE]=nlinfit(x,y,fun,beta1);
R=sum(Rv.^2);
if abs(R0-R)<delta
break;
end
beta1=betafit;
R0=R;
end
CovMtx=CovB;
ci=nlparci(beta1,Rv,'Covar',CovB);
tci=tinv([0.025 0.975],12-2);
sigma=((ci-beta)./tci)*sqrt(12);
plot(x,fun(betafit,x),'-r');
xlabel('t (min)');
ylabel('qt (mg/g)');
title(strcat('\beta=[',num2str(betafit),'];----stopped at--','n=',num2str(n)));
Star Strider
Star Strider el 22 de Mzo. de 2024
It seems that you only copied part of my code.
When I provided the rest of it (slightly modified from the earlier version), it works as expected —
x=[0 5 10 15 20 30 45 60 75 90 105 120];
y=[0 3.87 4.62 4.98 5.21 5.40 5.45 5.50 5.51 5.52 5.54 5.50];
plot(x,y,'ro','MarkerFaceColor','r');
hold on
beta0=[5,0.1];
beta1=beta0;
delta=1e-8;
R0=Inf;
for n=1:15000
fun=@(beta,t) beta(1)*(1-6/(pi^2)*sum((1./(1:n)'.^2).*exp(-beta(2)*((1:n)'.^2).*t),1));
[betafit,Rv,J,CovB,MSE]=nlinfit(x,y,fun,beta1);
R=sum(Rv.^2);
if abs(R0-R)<delta
break;
end
beta1=betafit;
R0=R;
end
% CovMtx=CovB;
betav = beta1(:) % Convert 'beta1' To The column Vector 'betav'
betav = 2x1
5.4856 0.1379
ci=nlparci(beta1,Rv,'Covar',CovB) % PArameter Confidence Intervals
ci = 2x2
5.4387 5.5326 0.1280 0.1478
tci=tinv([0.025 0.975],12-2); % Inverse 't' Distribution
sigma=((ci-betav)./tci)*sqrt(12) % Calculate Standard Deviations
sigma = 2x2
0.0731 0.0731 0.0154 0.0154
fprintf('Beta(1) = %8.4f\t\tStandatrd Deviation = %8.4f\nBeta(2) = %8.4f\t\tStandatrd Deviation = %8.4f\n',[betav sigma(:,1)].')
Beta(1) = 5.4856 Standatrd Deviation = 0.0731 Beta(2) = 0.1379 Standatrd Deviation = 0.0154
plot(x,fun(betafit,x),'-r');
xlabel('t (min)');
ylabel('qt (mg/g)');
title(strcat('\beta=[',num2str(betafit),'];----stopped at--','n=',num2str(n)));
I added the fprintf call to be certain that there are no ambiguities.
.

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