Getting min value from fminunc
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I'm using the function fminunc to find the minimum in square difference. The code I have is
fun=@(param)f_Makeham(param,mu_perks_1938);
param0 = [0,0.2,1.2];
[S2, fval]=fminunc(fun,param0);
function res = f_Makeham(param,mu_perks_1938)
a0=param(1);
b0=param(2);
c0=param(3);
x=(77.5:1:100.5)';
res=sum((a0+b0*exp(c0*x)-mu_perks_1938).^2);
This result in fval=9.8674e+59 which is clearly not small at all. I understand the function fminunc is to find the minimum of the function. Please help here, I don't see where I'm going wrong here. I amended the question with a figure of mu_perks_1938.
1 comentario
Walter Roberson
el 27 de Mzo. de 2018
I would suggest to you that you should be using the Curve Fitting Toolbox for this.
Respuestas (2)
Walter Roberson
el 29 de Mzo. de 2018
"This result in fval=9.8674e+59 which is clearly not small at all."
No, it is really quite good for that formula and that range of x values. With the starting values you give, a0+b0*exp(c0*x) ranges from 4.90249108584017e+39 to 4.75274499526166e+51. Suppose that your mu_perks_1938 were almost exactly those, but there was a single bit round-off error. That gives eps() in the range 6E+23 to 6E+35. square those, sum them, and you would get 4.76686006670123e+71 . So the expected residue for as close of a fit as you could realistically hope to get with those parameters is about 5E11 times larger than the residue you are seeing. Either you are getting quite lucky on matching data values bit-for-bit, or else the optimization is able to find a better fit by over 10 orders of magnitude.
0 comentarios
Birdman
el 27 de Mzo. de 2018
I believe the exponential term in your function should be decaying as follows:
res=sum((a0+b0*exp(-c0*x)-mu_perks_1938).^2);
4 comentarios
Torsten
el 28 de Mzo. de 2018
The y-data are increasing with x, thus c0 should be positive:
https://de.mathworks.com/matlabcentral/answers/390707-equivalent-of-excel-solver-fminunc
Best wishes
Torsten.
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