Minimizing the values in an underdetermined Matrix - minimize with constraints
5 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
Joseph
el 4 de Jul. de 2012
Comentada: Torsten
el 30 de Jun. de 2016
I'm new to MATLAB, and there is probably a very simple way to do this. I have a linear set of equations Ax=b. I have matrix A and matrix b, and I need to solve for the smallest values in matrix x that satisfy the equation. The solution is underdetermined. Is there a way to do this? Essentially I need to minimize the components in the matrix x subject to constraints. Mathematica has the NMinimize function which looks perfect, except I cannot find an equivalent in MATLAB. fmincon does not seem to work for matrix entries.
Thanks
1 comentario
Richard Brown
el 5 de Jul. de 2012
Out of interest, are you doing compressed sensing? l1-magic is a collection of MATLAB routines designed for such problems: http://users.ece.gatech.edu/~justin/l1magic/
Respuesta aceptada
Richard Brown
el 4 de Jul. de 2012
Editada: Richard Brown
el 5 de Jul. de 2012
edit: fixed mistake in call to linprog
To perform L1 minimisation, you'll need access to an LP solver. If you have the optimization toolbox, linprog is your friend.
The easiest way to do it is as follows:
Define a vector t of the same length as x such that -t <= x <= t
The linear program is then
minimise t(1) + ... + t(n)
subject to A*x = b
-x - t <= 0
x - t <= 0
To solve it in MATLAB, I'll assume you have an m x n matrix A, and m x 1 vector b
[m, n] = size(A);
f = [zeros(n, 1); ones(n, 1)];
Ai = [-eye(n), -eye(n); eye(n), -eye(n)];
bi = zeros(2*n, 1);
x = linprog(f, Ai, bi, [A, zeros(m, n)], b);
x = x(1:n);
6 comentarios
Giorgio
el 30 de Jun. de 2016
Thank you for this helpful code! How should I modify the matrix Ai in order not to have negative results (x>=0)?
Torsten
el 30 de Jun. de 2016
[m, n] = size(A);
f = [zeros(n, 1); ones(n, 1)];
Ai = [-eye(n), -eye(n); eye(n), -eye(n)];
bi = zeros(2*n, 1);
lb = zeros(2*n, 1);
ub = Inf(2*n, 1);
x = linprog(f, Ai, bi, [A, zeros(m, n)], b, lb, ub);
x = x(1:n);
Best wishes
Torsten.
Más respuestas (1)
Richard Brown
el 4 de Jul. de 2012
Assuming you want a minimal Euclidean norm solution, there's no built-in function, but I can offer you a two-line solution:
[Q, R] = qr(A', 0);
x = Q * (R' \ b);
If you want a minimal 1 or infinity norm solution, then you can cast the problem as a linear program.
6 comentarios
Richard Brown
el 5 de Jul. de 2012
Editada: Richard Brown
el 5 de Jul. de 2012
Glad that worked for you. When I tried it on some random examples (even small ones), your call to fmincon with default parameters didn't converge. This isn't surprising, because the 1-norm objective isn't differentiable, and fmincon is designed for smooth problems.
I would still recommend using an LP based solution if you're interested in performance - I'd expect you'd get 10x or better speed performance from linprog for your problem
Ver también
Categorías
Más información sobre Solver Outputs and Iterative Display en Help Center y File Exchange.
Productos
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!