Borrar filtros
Borrar filtros

how to solve the following problem using optimization toolbox?

3 visualizaciones (últimos 30 días)
Muna Tageldin
Muna Tageldin el 22 de Sept. de 2020
Comentada: Mario Malic el 23 de Sept. de 2020
I have this estimation problem where I use maximum likelhood estimation to solve it where the problem has pdf of:
f(x)=m1*(1/(sqrt(2*pi)*o_x)))*exp(-0.5*power(z-ux,2)/o_x^2))+(1-m1)*m1*(1/(sqrt(2*pi)*o_y)))*exp(-0.5*power(z-uy,2)/o_y^2));
both are normal distributions (I want to estimate m1, ux,uy,o_x,o_y) using optimisation toolbox
I used fmincon since I am trying to limit the range of possible values (impost constraints on the values of m1, ux,uy,o_x,o_y)
I used a for loop for the main program.
problem.objective = @(y)norm_likelhood_fun(y,z); %%%%z is the data and y is a vector representing vector of values to be estimated
for j=1:100
% problem.x0=(problem.ub+problem.lb)/2;
problem.x0 = rand(5,1);
[y,feval]=...
fmincon(problem);
%y = run(gs,problem);
y_f(:,j)=y;
end
In each loop iteration, different initial values are used to search for minumum( I know the optimiser is sensitive to initial values). My question is how can I reach the convergence (different initial values lead to the same solution). What is the best algorithm suited for this problem?. How can I visualize the data with optimisation problem I have (contour lines)?
  4 comentarios
Muna Tageldin
Muna Tageldin el 23 de Sept. de 2020
whats the best way to visualise the optimisation problem (local and global minumum)?
Mario Malic
Mario Malic el 23 de Sept. de 2020
I don't think it's possible, it's 5D problem. Do you really need 10^-30 on TolX and TolFun?
Issue with your options are, that your MaxIter, TolFun and TolX are from optimset, but you use optimoptions. I don't know what values you get in fval (rename from feval, as feval is a function), so try these options.
options = optimoptions('fmincon','Display','iter-detailed','Algorithm','sqp','MaxIterations',10000, ...
'StepTolerance',10^-10,'TolFun',10^-10,'OptimalityTolerance',1e-12, 'Plotfcn', @optimplotfval);

Iniciar sesión para comentar.

Respuestas (0)

Categorías

Más información sobre Genetic Algorithm en Help Center y File Exchange.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by