Issue with large memory required for non-linear optimizer
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Dear Matlab community hi.
I tried to run the following optimization problem for a 2-dimensional optimization variable of size 150x150. For some reason, the system creates somehow in the optimization process (I guess) some matrix of size (150^2)x(150^2). I tried to solve the issue for several days now (with the different options shown in comments) but I cannot understand why MATLAB creates such a huge matrix in the solution process. Is there, perhaps, some other nonlinear optimizer in MATLAB that does not require such huge matrices? Any help on this issue would be very helpful.
With best wishes,
Yannis
a = 4;
b = 2.1;
c = 4;
x = optimvar('x',150,150);
prob = optimproblem;
prob.Objective = parameterfun(x,a,b,c);
%opts=optimoptions('fmincon','Algorithm','interior-point','SpecifyObjectiveGradient',true,'HessianFcn','objective');
%opts=optimoptions('quadprog','Algorithm','trust-region-reflective','Display','off');
opts = optimoptions('fminunc','Algorithm','trust-region');
opts.HessianApproximation = 'lbfgs';
opts.SpecifyObjectiveGradient = false;
x0.x = 0.5 * ones([150,150]);
%[sol,qfval,qexitflag,qoutput] = solve(prob,x0,'options',opts);
[sol,fval] = solve(prob,x0)
3 Comments
Torsten
on 19 Apr 2023
Try a simple gradient descend method.
All MATLAB optimizers seem to use 2nd order information of the function to be minimized. This means the Hessian must be built/approximated which has dimension n^2 if you have n variables to be optimized.
Correct me if I'm wrong.
Yannis Stamatiou
on 20 Apr 2023
Moved: John D'Errico
on 20 Apr 2023
Torsten
on 20 Apr 2023
Moved: John D'Errico
on 20 Apr 2023
And what did you decide to do ?
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