Baysian Optimisation. Any way of increasing the sample size of candidates solutions to satisfy XConstraintFunction in bayesopt()?

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I'm investigating the suitability of bayesopt() for problems of increasing dimensionality and range within the variables. As both of these increase, the number of solutions in the solution space grows quickly, whilst the number of feasible solutions grows less quickly. I have included a constraint function as an input to bayesopt(). The bayeopt() algorithm checks whether this can be satisfied be inputting 10,000 possible solutions (I assume drawn from the solution space) to it and seeing if any are feasible. However as mentioned before, the solution space grows a lot more quickly than the number of feasible solutions. This means that it becomes very unlikely to draw a feasible solution in 10,000 selections. If a feasible solution is not found, bayesopt() considers there to be no feasible solutions and terminates the algorithm. However, I know that there are feasible solutions so would like the algorithm to continue so I can see how it performs. Is there a way of increasing the 10,000 limit? I can see the variable that would be need to changed in the bayesopt() code, but when I try to change it I get a pop up box saying that I dont have access to alter the file.
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Bob Hickish
Bob Hickish el 5 de Oct. de 2017
Editada: Bob Hickish el 5 de Oct. de 2017
Furthermore, it is strange that one can provide an InitialX to bayesopt() but the ConstrainFunction checking process doesn't evaluate this. Is there anyway of passing InitialX to the constraint function during the checking process to convince bayesopt() that the constraint function is satisfiable? Thanks
LANG Wu
LANG Wu el 3 de Mayo de 2021
Hi Bob,
Have you solved the issue that passing InitialX to the constraint function?
Thanks,
Lang

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Don Mathis
Don Mathis el 6 de Oct. de 2017
Unfortunately the API doesn't allow that, but you can assign into the Options object once you have one. The bayesopt function creates one right away, so you could do something like this:
x = optimizableVariable('x',[-8,8]);
fun = @(T)sin(T.x);
BO = my_bayesopt(fun, x)
function Results = my_bayesopt(ObjectiveFcn, VariableDescriptions, varargin)
Options = bayesoptim.BayesoptOptions(ObjectiveFcn, VariableDescriptions, varargin);
Options.NumRestartCandidates = 1e6;
Results = BayesianOptimization(Options);
end
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Don Mathis
Don Mathis el 13 de Oct. de 2017
You can define your own modified version of the BayesianOptimization class and have your "my_bayesopt" function call that. Put a copy of BayesianOptimization.m into your local folder and rename it MyBayesianOptimization.m. Then, inside MyBayesianOptimization.m,
  • Rename the class on line 1:
classdef MyBayesianOptimization
  • Rename the constructor:
function this = MyBayesianOptimization(Options)
  • Make checkXConstraintFcnSatisfiability do nothing:
function checkXConstraintFcnSatisfiability(this)
end
Inside your my_bayesopt.m, make it call your new class:
function Results = my_bayesopt(ObjectiveFcn, VariableDescriptions, varargin)
Options = bayesoptim.BayesoptOptions(ObjectiveFcn, VariableDescriptions, varargin);
Options.NumRestartCandidates = 1e6;
Results = MyBayesianOptimization(Options);
end
This works for me in MATLAB version R2016b. Let me know how it goes.
Bob Hickish
Bob Hickish el 1 de Nov. de 2017
I have just got round to implementing this. It has worked perfectly, thanks.

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