How can I reduce error on loglog scale using linear regression?
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    Marisabel Gonzalez
 el 12 de Nov. de 2018
  
    
    
    
    
    Comentada: Star Strider
      
      
 el 13 de Nov. de 2018
            This is what I am doing with my imported data. What can I do to reduce the multiplicative errors? I tried to adapt non-linear regression to my script but I don't understand the examples that I've found so far. If possible, please suggest what could I do in both scenarios.
- Reduce the error in linear regression
 - Apply non-linear regression instead with every line explained
 
The plot of my data in log scale is shown below.
Thanks
% x: assume any column vector x
% y: assume any column vector y
loglog(x,y, '*');
% % Estimating the best-fit line
const = polyfit(log(x),log(y), 1);
m = const(1);
k = const(2);
bfit = x.^m.*exp(k); % y = x^m * exp(k)
hold on
loglog(x,bfit)

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  Star Strider
      
      
 el 13 de Nov. de 2018
        Change them to additive errors (as they should be) using nonlinear regerssion techniques.  
Example (from another Answer) — 
temp = [100,200,400,600,800,1000,1200,1400,1600]';
density = [3.5,1.7,0.85,0.6,0.45,0.35,0.3,0.25,0.2]';
fcn = @(b,x) exp(b(1).*x).*exp(b(2)) + b(3);
[B,rsdnorm] = fminsearch(@(b) norm(density - fcn(b,temp)), [-0.01; max(density); min(density)]);
fprintf(1, 'Slope \t\t=%10.5f\nIntercept  \t=%10.5f\nOffset \t\t=%10.5f\n', B)
tv = linspace(min(temp), max(temp));
figure
plot(temp, density, 'p')
hold on
plot(tv, fcn(B,tv), '-')
grid
text(500, 1.7, sprintf('f(x) = %.2f\\cdote^{%.4f\\cdotx} + %.2f', B([2 1 3])))
There are a number of funcitons you can use to do nonlinear parameter estimation in MATLAB.  I use fminsearch here because every body has it.  
7 comentarios
  Star Strider
      
      
 el 13 de Nov. de 2018
				The fminsearch function is much more sensitive to initial parameter estimates than other optimisation routines.  I decided to let the Global Optimization Toolbox genetic algorithm ga funciton see what it could come up with, using patternsearch to fine-tune the parameter estimates.  
The best were: 
B =
          3.29616368688383         -75.2881776260513        0.0003711181640625         -256076512.169127
producing a residual norm of 0.0010247, and: 

This is simply the nature of many nonlinear parameter estimation problems.  Your problem is particularly difficult because of the range and magnitude of your data, and the small number of data you have.  
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