Given two random variables/measurements (x, y), both measured with error (error-in-variables case),
is there a routine in MATLAB to calculate the estimators (a, b) of a regression line y(i)=a·x(i)+b using the method of orthogonal distance regression?
Here's my implementation of Maximum Likelihood estimator:
x= [1.0, 0.6, 1.2, 1.4, 0.2]; y=[0.5, 0.3, 0.7, 1.0, 0.2]; mx = mean(x); my = mean(y); p = (x(:) - mx) .^ 2; q = (y(:) - mx) .^ 2; w = p .* q; sxx = sum(p); syy = sum(q); sxy = sum(w); w=p.*q; sxy=sum(w); l = 1; %# orthogonal distance regression a = (syy - l * syy + sqrt((syy - l * sxx) ^ 2 + 4 * l * sxy^2)) / (2 * sxy); b = my - a * mx;
EDIT (addressed to EitanT):
Here's a comparison of my estimators and yours: