non linear regression model with constraints
3 views (last 30 days)
Show older comments
I have a set of data that I want to fit with a non linear regression model. The regression function is y=k*x.^alpha (I usually use fitnlm). I would like to put a constraint on the area under the curve. I tried computing the integral and making a substitution but when alpha is close to -1 (and it is my case), the integral has a different expression and thus I do not know how to express the area in a way that works for alpha=-1 and for alpha different from -1. Many thanks in advance
2 Comments
Kaushik Lakshminarasimhan
on 24 Aug 2018
Edited: Kaushik Lakshminarasimhan
on 24 Aug 2018
Can you share your code where you define the constraint for the case when alpha is far away from -1?
Accepted Answer
Matt J
on 24 Aug 2018
Edited: Matt J
on 26 Aug 2018
Using fmincon, solve 3 separate problems and take the best solution of the three (the solution with the least regression error):
Problem 1: Solve subject to the constraints
alpha<=-1-delta
k*[x2^(alpha+1)-x1^(alpha+1)] - (alpha+1)*A=0
where delta>0 is as small as possible without running into numerical problems in the evaluation of 1/(alpha+1)*[x2^(alpha+1)-x1^(alpha+1)].
Problem 2: Solve subject to the constraints
alpha>=-1+delta
k*[x2^(alpha+1)-x1^(alpha+1)] - (alpha+1)*A=0
Problem 3: Solve subject to -1-delta <= alpha <= -1+delta. I would just approximate the solution here as alpha=-1 and k=A/log(x2/x1).
0 Comments
More Answers (2)
Matt J
on 24 Aug 2018
Edited: Matt J
on 24 Aug 2018
If you know alpha is very close to -1 (nearly within numerical precision), replace the regression function with y=k*T(x,alpha) where T(x,alpha) is a Taylor expansion of x^alpha about alpha=-1.
2 Comments
Matt J
on 25 Aug 2018
Edited: Matt J
on 25 Aug 2018
No, but if you follow the approach with the Taylor expansion, there is no need for fmincon. You can use the area constraint to eliminate k, just as you were planning to do originally.
Alternatively, solve first with fmincon. Then plug the alpha you get as the initial point beta0 for fitnlm. Here, you have prior knowledge of whether alpha=-1 or not and so can choose the expression for A accordingly. Since you are initializing fitnlm with the known solution, it should converge in few or zero iterations and give you the goodness of fit metrics.
Matt J
on 26 Aug 2018
If you know a prior that alpha is very close to -1, maybe you should just bound the optimization to a small interval -1-delta <= alpha <= -1+delta around -1. Then you can just approximate the area as constant over that interval,
A=k*log(x2/x1)
and eliminate k from the optimization,
k=A/log(x2/x1)
2 Comments
Matt J
on 26 Aug 2018
Edited: Matt J
on 26 Aug 2018
Well, that's the same as saying you don't really have any a priori knowledge of where alpha lies. That takes you back to my original proposal, which is a generic solution.
See Also
Categories
Find more on Least Squares in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!