6x6 system of multivariate quadratic equations ... non-negative real solutions
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What is the best way (what solver?) to effectively find real non-negative solutions of 6 multivariate quadratic equations (6 variables)?
f_i(x) = 0, i = 1,6, where x = [x1,x2,...,x6] and f_i(x) is the quadratic form with known real coeffs.
9 Comments
Walter Roberson
on 4 Nov 2024
To confirm, you have the form:
syms x [6 1]
syms A [6 6]
A = diag(diag(A))
x' * A * x
Bruno Luong
on 4 Nov 2024
"A always contains only one non-zero diagonal element on the ith row/column "
To me it means
Ai(j,j) == 0 is true for i ~= j and
false for i == j.
Accepted Answer
Bruno Luong
on 4 Nov 2024
Edited: Bruno Luong
on 4 Nov 2024
Assuming the equations are
x' * Ai * x + bi'*x + ci = 0 for i = 1,2, ..., N = 6.
Ai are assumed to be symmetric. If not replace with Asi := 1/2*(Ai + Ai').
You could try to iteratively solve linearized problem; in pseudo code:
x = randn(N,1); % or your solution of previous step, slowly changing as stated
L = zeros(N);
r = zeros(N,1);
notconverge = true;
while notconverge
for i = 1:N
L(i,:) = (2*x'*Ai + bi');
r(i) = -(x'*Ai*x + bi'*x + ci);
end
dx = L \ r;
xold = x;
x = x + dx;
x = max(x,0); % since we want solution >= 0
notconverge = norm(x-xold,p) > tolx && ...
norm(r,q) > tolr; % select p, q, tolx and tolr approproately
end
I guess fmincon, fsolve do somesort of Newton-like or linearization internally. But still worth to investogate. Here the linearization is straight forward and fast to compute. Some intermediate vectors in computing L and r are common and can be shared.
3 Comments
Bruno Luong
on 4 Nov 2024
Edited: Bruno Luong
on 5 Nov 2024
x = 0 is ONE solution (up to 2^6 in the worst case). You have Newton actually converges to a local minima of ONE solution. Bravo.
You need to change
x = randn(N,1);
so as it would converge to a desired solution.
More Answers (2)
Aquatris
on 1 Nov 2024
2 Comments
John D'Errico
on 1 Nov 2024
No. There is not. We all want for things that are not possible. Probably more likely to hope for peace in the world. Yeah, right.
Torsten
on 1 Nov 2024
Moved: Torsten
on 1 Nov 2024
I think there is no specialized solver for a system of quadratic equations. Thus a general nonlinear solver ("fsolve","lsqnonlin","fmincon") is the only chance you have.
3 Comments
Torsten
on 1 Nov 2024
Edited: Torsten
on 1 Nov 2024
You shouldn't think about speed at the moment. You are lucky if you get your system solved and if the solution is as expected. A system of quadratic equations is a challenge.
If this works satisfactory, you can save time if you set the solution of the last call to the nonlinear solver to the initial guess of the next call (since you say that your coefficients vary slowly).
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