# Orthogonal distance regression in MATLAB

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;
``````

Here's a comparison of my estimators and yours:

-

MATLAB doesn't have a built-in function exactly like that, but you can easily find the estimators a and b with `svd` approximation1,2:

``````data = [x(:), y(:)];
[U, S, V] = svd(data - repmat(mean(data), size(data, 1), 1), 0);
a = -V(1, end) / V(2, end);
b = mean(data * V(:, end)) / V(2, end);
``````

Which is in fact the orthogonal distance regression method.

EDIT #1:
Here's a plot of the original data, alongside my estimator and yours.

Your estimator is highly inaccurate, which brings me to believe that that your implementation is flawed.

EDIT #2:

Here's an updated plot if the computation of `a` is corrected to:

``````a=(syy-l*syy+sqrt((syy-l*sxx)^2+4*l*sxy^2)) / (2*sxy);  %# Forgot parentheses!
``````

Closer, but still not as accurate as mine.

EDIT #1:

You can further improve the accuracy of `sxx`, `syy` and `sxy`, like so:

``````cov_mat = cov(x, y);
sxx = cov_mat(1, 1);  %# Same as: sxx = var(x);
syy = cov_mat(2, 2);  %# Same as: syy = var(y);
sxy = cov_mat(1, 2);  %# Same as: sxy = cov_mat(2, 1);
``````

-
I'm a bit confused with the matrices U, S and V and I can't find any similarity with the orthogonal distance regression method (ODR). I run an example using the above code and the equations of ODR and the estimators are different in each case. Thanks anyway for your time. –  user1487735 Sep 3 '12 at 19:33
In the ODR we assume that λ is known and equals 1 (meaning the two error variances are the same) and in the geometric mean functional relationship λ= Syy/Sxx. –  user1487735 Sep 3 '12 at 22:40
Obviously there's something wrong with my implementation. –  user1487735 Sep 3 '12 at 22:43
Ah, okay. I found it too, but it is a user implementation, not official. –  Eitan T Sep 4 '12 at 7:21