Bestfit value doesn't match with the plotted value
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I am using nlinfit to fit a gaussian square function in my data. My code is shown below:
initGuess=[max(g1),500,100]
g1 is my data that needs to be fitted.
gaussian_fn= @(q,x) (q(1)^2.*exp(-2.*((x-q(2)).^2)/q(3).^2));
[bestfit,resid]=nlinfit(x1,g1,gaussian_fn,initGuess);
scatter(x1,g1,'.');
hold on;
A2=gaussian_fn(bestfit,x1);
plot(x1,gaussian_fn(bestfit,x1),'r');
My code gives me the result shown above but the bestfit value shown in the workspace (maked with yellow highlighter ) is different from the value shown in the graph. In graph it shows me 0.9065 whereas bestfit value is 0.9522. Why it is different? why it is not giving me the samevalue shown as bestfit value?
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Accepted Answer
dpb
on 23 Feb 2021
Edited: dpb
on 23 Feb 2021
Because you used
gaussian_fn= @(q,x) (q(1)^2.*exp(-2.*((x-q(2)).^2)/q(3).^2));
as your fitting function -- in which q(1) is squared --
>> q=[0.9522,559.2633,425]; % from your screenshot
>> q(1)^2
ans =
0.9067
>>
For comparison,
>> gaussian_fn(q,q(2)) % at peak center is max value
ans =
0.9067
>> gaussian_fn(q,555) % where you evaluated on plot
ans =
0.9065
>>
Use
gaussian_fn= @(q,x) (q(1).*exp(-2.*((x-q(2)).^2)/q(3).^2));
if you want the peak amplitude to be same as coefficient.
4 Comments
dpb
on 23 Feb 2021
Glad to try to help...
I was going to comment that the Gaussian doesn't do a great job; your peak is flattened and broadened noticeably from a pure Gaussian altho it is pretty-good on a symmetry basis.
Some transformation or alternate distribution form would seem reasonable to use, agreed.
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