is there something similar to Excel Solver in Matlab?
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Andrew
on 10 Aug 2011
Commented: John C L Mayson II
on 2 May 2018
Hi, I have a similar problem. To simplify assume a linear equation y=mx+c. I have values for the independent variable x, the actual y and want to solve for coefficients m and c. Using Excel Solver I would use random initial values for m and c in my equation, and get a fitted y, say y_fit. Then work the sum of squared residuals between y and y_fit [RSS = sum((y-yfit)^2)]. Then tell Solver to give me a solution for m and c which minimises RSS. Is this possible in Matlab? Can I make use of the Optimisation tool box to do this?
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Accepted Answer
Titus Edelhofer
on 10 Aug 2011
Hi,
take a look at lsqcurvefit http://www.mathworks.com/help/toolbox/optim/ug/lsqcurvefit.html from Optimization Toolbox. It should do what you are looking for ...
Titus
2 Comments
John C L Mayson II
on 2 May 2018
Hi Andrew, I am a beginner in MATLAB and currently struggling with the same problem. I visited the link uploaded by Titus but still couldn't figure it out. I have a set of equations which obtains a variable "b". In one of those equations, I assumed a constant value for a variable "a". Now I want to set variable "b" to 0.01 by changing variable "a". Can you please help if you have the time?
More Answers (1)
Fangjun Jiang
on 10 Aug 2011
From help robustfit.
x = (1:10)';
y = 10 - 2*x + randn(10,1); y(10) = 0;
bls = regress(y,[ones(10,1) x])
brob = robustfit(x,y)
scatter(x,y)
hold on
plot(x,brob(1)+brob(2)*x,'r-', x,bls(1)+bls(2)*x,'m:')
2 Comments
Fangjun Jiang
on 10 Aug 2011
I am not following. If you assume y=m*x+c, it means linear and the result from regress() is the result of minimizing RSS. If you want to do for example, y=n*x^2+m*x+c, then you can use regress(y,[ones(10,1) x x.^2]). There is no need to do iteration.
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