Defining my objective function using vector of variables for lsqnonlin
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I wanna use lsqnonlin for estimating vector of variables of length 6
function F = myfun()
global X      % regression matrix of (nx6)
global Y      % output vector (nx1)
F = Y - ( w(1)*X(:,1) + w(2)*X(:,2) + w(3)*X(:,3) + w(4)*X(:,4) + w(5)*X(:,5) + w(6)*X(:,6) );
end
How can I dynamically define my function to adapt with any change in the number of variables (m) when the regression matrix dimesions (nxm) is changed. as follow
F = Y - ( w(1)*X(:,1) + w(2)*X(:,2) + w(3)*X(:,3) + .. + w(m)*X(:,m) );
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  Sameer
      
      
 le 4 Juin 2025
        
      Modifié(e) : Sameer
      
      
 le 4 Juin 2025
  
      To make the objective function adaptable to any number of variables (based on the number of columns in the regression matrix), the computation can be written using matrix operations instead of hardcoding each term.
Assuming "X" is an "n × m" regression matrix and "w" is a variable vector of length "m", the function can be written like this:
function F = myfun(w)
    global X Y
    F = Y - X * w;
end
This way, the function works for any number of variables, as long as the number of columns in "X" matches the length of "w". The key is using matrix multiplication, which automatically handles the summation over all terms.
Hope this helps!
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