How to do weighted least square rgression?

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Hello
I want to fit an exponential curve to my data using MatLab. Could you please guide me how can I write a code to fit this through weighted least square reression? The weight matrix is as follows. I could not find any instruction or sample code to do so!
weight=[18.5204555170429; 24.8007492441765; 21.4204953742493; 12.0007299687922; 5.17482448096073;2.24987321147564]
x=[1.5;4.5;7.5;10.5;13.5;16.5]
y=[0.466132177250491;0.307694759285704;0.477550022494737;0.489169081512968;0.439027124884140;0.306938063199741]
Thanks

Answers (1)

Star Strider
Star Strider on 6 Oct 2023
Edited: Star Strider on 6 Oct 2023
One option is to use fitlm
weight=[18.5204555170429; 24.8007492441765; 21.4204953742493; 12.0007299687922; 5.17482448096073;2.24987321147564];
x=[1.5;4.5;7.5;10.5;13.5;16.5];
y=[0.466132177250491;0.307694759285704;0.477550022494737;0.489169081512968;0.439027124884140;0.306938063199741];
mdl = fitlm(x,y, 'Weights',weight)
mdl =
Linear regression model: y ~ 1 + x1 Estimated Coefficients: Estimate SE tStat pValue _________ _________ ______ ________ (Intercept) 0.39951 0.07398 5.4003 0.005691 x1 0.0031898 0.0099772 0.3197 0.76519 Number of observations: 6, Error degrees of freedom: 4 Root Mean Squared Error: 0.353 R-squared: 0.0249, Adjusted R-Squared: -0.219 F-statistic vs. constant model: 0.102, p-value = 0.765
figure
plot(mdl)
grid
I assume that you want to do a linear regression, since you did not mention a nonllinear model of any sort.
.
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