non linear data fit (weighted least square)
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Hello, I would like to fit a data set (X,Y) with a non linear function y=f(x,a,b) where a and b are the paramters to be fitted.
In my case both X and Y have an uncertainty.
Is there a way to carry out a weighted least square with MATLAB?
Can the uncertainty on X be taken into account?
I spent nearly one hour looking around for a way to do that but I had no success.
Thank you,
Accepted Answer
More Answers (2)
Geoff
on 16 May 2012
Let's say you have your function:
f = @(x,a,b) = a * x.^b;
Now, you have your data set and weights:
X = [...];
Y = [...];
W = [...];
I'll assume that W is positive, where higher values have more influence...
So, you want an objective function that accounts for these weights:
wobj = @(p,x,y,w) = sum(w .* (f(x,p(1),p(2)) - y) .^ 2);
Here I've calculated the square difference between your function f and the data y, multiplied that by the weights, and then summed the result. That might not be the correct way, but bear with me - I'm not a mathematician!
Finally, you wrap it all together. Since I'm used to fminsearch I'll use that, but there are probably better functions available that will minimize on an objective function.
p0 = [a0, b0]; % Initial guess for a and b
p = fminsearch( @(p) wobj(p,X,Y,W), p0 );
a = p(1);
b = p(2);
If this isn't quite right, it ought to be close =) Perhaps I should've divided those weights? Erkk, brain doesn't want to think about it right now.
Frederic Moisy
on 16 May 2012
0 votes
Hello,
a simple non-linear fitting method is provided in the (free) Ezyfit toolbox:
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