Azzera filtri
Azzera filtri

How can I do non-linear regression for three varietals?

44 visualizzazioni (ultimi 30 giorni)
Hi All,
I have matrix with three variables (x,y,z) I would like to get best non linear regression for these variables using like this equation: Eq=a*x+b*y+c*z+d
How can I get the constants and correlation coefficient?
Thanks in advance,
Riyadh
  4 Commenti
abuzer
abuzer il 23 Gen 2017
I assumed he wrote wrong equation. Because he asks nonlinear..
Riyadh Muttaleb
Riyadh Muttaleb il 23 Gen 2017
Thank you for your notes, let's say how can I regress three variables?, I have tried to apply the function you have mentioned but I couldn't to apply them for three variables

Accedi per commentare.

Risposta accettata

Star Strider
Star Strider il 23 Gen 2017
The equation you posted is linear. Assuming it is a stand-in for a nonlinear equation, the usual way of fitting a function of several variables is to create a matrix of the incependent variables and passing that as one argument to the objective and fitting functions.
Example:
% % % MAPPING: x = xyz(:,1), y = xyz(:,2), z = xyz(:,3), a = b(1), b= B(2), c = b(3), d = b(4)
xyz = [x(:) y(:) z(:)];
Eq = @(b,xyz) b(1).*xyz(:,1) + b(2).*xyz(:,2) + b(3)*zyz(:,3) + b(4);
Then just use them as arguments to whatever fitting function you want (such as nlinfit or lsqcurvefit).
  4 Commenti
Riyadh Muttaleb
Riyadh Muttaleb il 25 Gen 2017
Thank you,
this exactly what I have:
SPM(dependent variable)=a+b*S+c*A (S and A are independent variable)
so the equatio will be B = nlinfit(SA, a(:), Eq, B0)?; What is B0? I have values of SPM, S, and A and I would like to have the values of the constants a,b ,c with correlation coefficient R^2.
Thanks in advance
Star Strider
Star Strider il 25 Gen 2017
My pleasure.
You have described a linear model. I would do something like this:
Prms = [ones(size(SPM(:))), S(:), A(:)]\SPM(:);
a = Prms(1)
b = Prms(2)
c = Prms(3)
The core MATLAB linsolve function and the Statistics and Machine Learning Toolbox regress and glmfit functions (and several others) are also options.
That will work if your matrix is not sparse. If it is sparse, use the lsqr function.
See the documentation for the various functions to understand how to use them.

Accedi per commentare.

Più risposte (1)

the cyclist
the cyclist il 23 Gen 2017
Modificato: the cyclist il 23 Gen 2017
Maybe this will help?
% Here is an example of using nlinfit(). For simplicity, none of
% of the fitted parameters are actually nonlinear!
% Define the data to be fit
x = (0:0.25:10)'; % Explanatory variables
y = x.^2;
z = x.^3;
E = 5 + 3*x + 7*y + 11*z; % Response variable (if response were perfect)
E = E + 500*randn((size(x)));% Add some noise to response variable
% Define function that will be used to fit data
% (F is a vector of fitting parameters)
f = @(F,X) F(1) + F(2).*X(:,1) + F(3).*X(:,2) + F(4).*X(:,3);
F_fitted = nlinfit([x y z],E,f,[1 1 1 1]);
% Display fitted coefficients
disp(['F = ',num2str(F_fitted)])
% Plot the data and fit
figure
plot(z,E,'*',z,f(F_fitted,[x y z]),'g');
legend('data','fit','Location','NorthWest')
  3 Commenti
the cyclist
the cyclist il 23 Gen 2017
I edited my example, so that it now uses three explanatory variables: x,y,z.
(It is not important that I happened to used x itself to define y and z.)
Riyadh Muttaleb
Riyadh Muttaleb il 25 Gen 2017
Thank you for you cooperation,
I am a little confused with some numbers that you used,
this is my example:
SPM(dependent variable)=a+b*S+c*A (S and A are independent variable) I have values of SPM, S, and A and I would like to have the values of the constants a,b ,c with correlation coefficient R^2.
Thank you,

Accedi per commentare.

Tag

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by