# Nonlinear fitting function using matlab

I need to fit the curve that you can see in the image, that comes out from a lot of Monte Carlo simulations. I've also uploaded the data to fit in a txt file.

I've tryied to fit the curve with a function of the type :

ax*exp(b*(x^k))

with `k<1`. The results are similar to the experimental points but still far from the fitting function I need.

I've thought to split in different equations the whole range, but I haven't reached a solution yet. I.e. a straight line for the fist part and an exponential for the third. But what about the peak?

Any ideas?

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Do you have the Curve Fitting Toolbox? You can also use more complex approaches like sums of sine and cosine. –  Schorsch Feb 25 '14 at 19:30
I use EzyFit because it's free –  TheInterestedOne Feb 25 '14 at 19:32
I'm sorry... the data to plot are just the first (x) and the second (y) columns. Then comes the variance, the PRSD % and the number of MC runs in order to obtain the desired error. This txt file comes out from a Fortran90 script. –  TheInterestedOne Feb 25 '14 at 19:40

Polynomial fitting of 8th degree:

``````close all; clear all;

fid = fopen('output_red.txt','r');
Z = textscan(fid, '%f %f %f %f %f');
fclose(fid);

X = log(Z{1});
Y = log(Z{2});

p = polyfit(X, Y, 8);
Y2 = polyval(p, X);

plot(exp(X), exp(Y));
hold on
plot(exp(X), exp(Y2), 'r')
legend('Original data','Fitted curve')

print('-dpng','fitted.png')
``````

`p` contains polynomial coefficients `1.2737e-05 -9.1262e-04 2.7838e-02 -4.7160e-01 4.8482e+00 -3.0958e+01 1.1990e+02 -2.5649e+02 2.3480e+02`. Using higher degrees of polynomial will result in better precision.

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Thank You so much for the help! But what about the fitting function equation? How can I get the coefficient of the polynomial? –  TheInterestedOne Feb 25 '14 at 20:30
You should want to run script yourself to compute least-squares error and decide on degree. –  divanov Feb 25 '14 at 20:43
Thank You for your help. It works great –  TheInterestedOne Feb 26 '14 at 14:30

I guess your problem is not only to smooth your curve... If it is, nothing is better than a well-chosen polynomial as pointed by @divanov. So, I have nothing to say about that.

However, as I understood your data describes an empirical distribution (you told us that it came from monte carlo simulations) and if you realy want to find a function that describes your data, you might consider to estimate a well-known distribution with a heavy tail.

There are some of them already cooked in matlab toolbox. I suggest you try for instance Weibull distribution, but you might eventually try other kinds.

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thank you I'll check –  TheInterestedOne Feb 26 '14 at 10:03