Obtain Hessian matrix from a sum of squares expression

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Hi,
I have been trying to obtatin the Hessian matrix of a complex quadratic expression of 2-d variables so as to write the quadratic optimization problam I have in matrix form. However, no matter how hard I tried, I could not find a way to accomplish this.
The expression looks like
0.0010309*x(11, 7)*x(13, 9) + 0.0016748*x(15, 11)*x(13, 9) + 0.0025*x(12, 7)*x(14, 9) + 0.00049916*x(16, 11)*x(14, 9) + 9.6648e-06*x(13, 7)*x(15, 9) + 0.0024*x(14, 7)*x(16, 9) + 3.5338e-07*x(3, 12)*x(1, 10) + 0.0019432*x(4, 12)*x(2, 10) + 0.0025*x(1, 8)*x(3, 10) + 0.0017032*x(5, 12)*x(3, 10) + 3.4478e-07*x(2, 8)*x(4, 10)
but with variables indexed up to 64 in each dimension. This is stored in the problem.Objective field of an minimization problem I set up. I tried the coeff function but it needed a list of variable, which are too many to list. Any help would be greatly appreciated.
Thanks,
Yannis

Respuesta aceptada

Matt J
Matt J el 10 de Mayo de 2023
Editada: Matt J el 10 de Mayo de 2023
x=optimvar('x',[64,64]);
Objective=0.0010309*x(11, 7)*x(13, 9) + 0.0016748*x(15, 11)*x(13, 9) + 0.0025*x(12, 7)*x(14, 9) + 0.00049916*x(16, 11)*x(14, 9) + 9.6648e-06*x(13, 7)*x(15, 9) + 0.0024*x(14, 7)*x(16, 9) + 3.5338e-07*x(3, 12)*x(1, 10) + 0.0019432*x(4, 12)*x(2, 10) + 0.0025*x(1, 8)*x(3, 10) + 0.0017032*x(5, 12)*x(3, 10) + 3.4478e-07*x(2, 8)*x(4, 10);
prob=optimproblem('Objective',Objective);
Hessian=prob2struct(prob).H
Hessian =
(395,525) 0.0021 (655,525) 0.0033 (396,526) 0.0050 (656,526) 0.0010 (397,527) 0.0000 (398,528) 0.0048 (707,577) 0.0000 (708,578) 0.0039 (449,579) 0.0050 (709,579) 0.0034 (450,580) 0.0000
  2 comentarios
Yannis Stamatiou
Yannis Stamatiou el 10 de Mayo de 2023
Hi Matt,
this is very helpful, thanks! I will try it on the whole expression later and get back to this thread to tell the result.
With best wishes,
Yannis
Yannis Stamatiou
Yannis Stamatiou el 11 de Mayo de 2023
Hi Matt,
thanks! This is what I needed!
With best wishes,
Yannis

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Más respuestas (1)

Torsten
Torsten el 10 de Mayo de 2023
Editada: Torsten el 10 de Mayo de 2023
Each optimizer expects the unknowns as a vector, not as a 2d-matrix.
So choose an arrangement of your unknowns in a vector of size (64^2,1). Then use MATLAB's "hessian" function to build the Hessian of your expression. Once you've created it with the symbolic toolbox, you can write it to file for use in a numerical computation. Since your expression seems to be quadratic, your Hessian will be constant, I guess.
  4 comentarios
Yannis Stamatiou
Yannis Stamatiou el 10 de Mayo de 2023
Hi Torsten,
thanks again! This is exactly my issue. I believe that using Matlab to solve quadratic optimization problems works best with the matrix representation of the objective function instead of the explicit algebraic form. The 64x64 objective function takes minutes to solve. For the 128x128 problem I simply stop the computation after several minutes have passed with no result. I will try the Hesisian then and get back to this thread to tell you the result.
Thanks!
Yannis
Yannis Stamatiou
Yannis Stamatiou el 11 de Mayo de 2023
I also thank you Torsten for this approach.
With best wishes,
Yannis

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