How to solve optimization problem using sequential minimal optimization (SMO) in MATLAB

Hello all, I have the following optimization problem .
where is a column vector of dimension , is also a column vector of dimension and is matrix of dimension and is row vector of .
My query is How to solve it using sequential minimal optimization (SMO) in MATLAB ?
Any help in this regard will be highly appreciated.

 Risposta accettata

There is this offering on the File Exchange, which I have never used,
It might be better just to use quadprog, although that uses a different algorithm.

7 Commenti

Thank you so much sir for your answer....
The first link seems to be not useful in my case...Will look for quadprog...
I had checked the quadprog, but my query is how to solve it with those constraints....
Here is the implementation of the constraints:
Aeq = b_l;
beq = zeros(size(b_l));
lb = zeros(size(b_l));
ub = C*ones(size(b_l));
Thank you sir for your response...But how you have decided about the code which you have written.
Also what about summation.
You could also use the problem-based set-up, e.g.,
K=rand(3);
K=K*K.';
b=rand(3,1)-0.5;
C=5;
alpha=optimvar('alpha',numel(b),'LowerBound',0,'UpperBound',C);
prob=optimproblem('Objective',alpha.'*(b.*K.*b')*alpha/2-sum(alpha),...
'Constraints', b'*alpha==0);
sol=solve(prob).alpha
Solving problem using quadprog. Minimum found that satisfies the constraints. Optimization completed because the objective function is non-decreasing in feasible directions, to within the value of the optimality tolerance, and constraints are satisfied to within the value of the constraint tolerance.
sol = 3×1
5.0000 3.9981 5.0000
Thank you sir for your detailed answer.
Basically, is the Gaussian radial basis function.
My query is that as both l, j in and is from 1 to , hence the norm inside exponential will always be zero, then how should we tackle this inside the two summations ?
My query is that as both l, j in and is from 1 to L_t, hence the norm inside exponential will always be zero, then how should we tackle this inside the two summations ?
No, the norm will be non-zero whenever the vectors pr[l] and pr[j] are different. Also, this seems far afield now from your originally-posted question. Even if all the norms were zero, the ways to proceed with the optimization, which Torsten and I have already described, would not change.
If your original question has been answered, please Accept-click the answer and post any new questions you may have in a new thread.

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Richiesto:

il 18 Mar 2023

Modificato:

il 20 Mar 2023

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