Second order multiple regression
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Hi all !
I'm trying to use 'regress' function to find the best-fit second-order multivariable polynomial equations. It seems most of the online sources are either first-order multiple linear regression or polynomials of only one independent variable. I'm wondering if I use 'regress' to find the best-fit second-order multivariable polynomial equation, is there any possible error even if the matching is accurate (e.g. colinearity maybe?)? What's the principle of 'regress' behind the codes?
Please see below my codes. Es is the dependent variable; mu and G are independent variables. Thank you very much for your answers!
G = [ 3 ;3 ;3 ; 25 ;25 ;25 ; 50 ;50 ;50 ;];
mu = [ 0.15 ;0.50 ;0.90 ; 0.10 ;0.50 ;0.90 ; 0.10 ;0.50 ;0.90 ;];
Es = [ 0.30 ;1.57 ;2.33 ; 0.28 ;2.37 ;4.29 ; 0.34 ;2.66 ;4.70 ;];
%Es = b0 + b1 * G + b2 * G^2 + b3 * mu + b4 * mu^2 + b5 * mu * G
X = [ones(size(G)) G G.^2 mu mu.^2 mu.*G];
b = regress(Es,X);
scatter3(G,mu,Es,'filled')
hold on
x1fit = min(G):2:max(G);
x2fit = min(mu):0.1:max(mu);
[X1FIT,X2FIT] = meshgrid(x1fit,x2fit);
YFIT = b(1) + b(2)*X1FIT + b(3)*X1FIT.^2 + b(4)*X2FIT + b(5)*X2FIT.^2 + b(6)*X1FIT.*X2FIT;
mesh(X1FIT,X2FIT,YFIT)
xlabel('G')
ylabel('\mu')
zlabel('E')
hold off
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