This paper presents a Sequential M odel Based Optimization framework for optimizing black-box expensive objective functions where feasibile search space is unknown a-priori. The framework is organized in two phases, the first uses M achine Learning (a Support Vector M achine classifier) to approximate the boundary of the feasible search space, the second uses standard Bayesian Optimization to perform efficient global optimization. With respect to the first phase, a specific acquisition function, to identify the next promising point to evaluate, has been proposed, dealing with the trade-off between improving the accuracy of the estimated feasible region and the possibility to discover possible disconnections of the actual feasible region. The main difference with standard Bayesian Optimization is that the optimization process is performed on the estimated feasibility region, only. Results on a set of 2D test functions proved that the proposed approach is more effective and efficient than standard Bayesian Optimization using a penalty for infeasibility.

Candelieri, A., Archetti, F. (2019). Sequential model based optimization with black-box constraints: Feasibility determination via machine learning. In AIP Conference Proceedings. American Institute of Physics Inc. [10.1063/1.5089977].

Sequential model based optimization with black-box constraints: Feasibility determination via machine learning

Candelieri A.
;
Archetti F.
2019

Abstract

This paper presents a Sequential M odel Based Optimization framework for optimizing black-box expensive objective functions where feasibile search space is unknown a-priori. The framework is organized in two phases, the first uses M achine Learning (a Support Vector M achine classifier) to approximate the boundary of the feasible search space, the second uses standard Bayesian Optimization to perform efficient global optimization. With respect to the first phase, a specific acquisition function, to identify the next promising point to evaluate, has been proposed, dealing with the trade-off between improving the accuracy of the estimated feasible region and the possibility to discover possible disconnections of the actual feasible region. The main difference with standard Bayesian Optimization is that the optimization process is performed on the estimated feasibility region, only. Results on a set of 2D test functions proved that the proposed approach is more effective and efficient than standard Bayesian Optimization using a penalty for infeasibility.
paper
Sequential Model Based Optimization
English
14th International Global Optimization Workshop, LeGO 2018 - 18 September 2018 through 21 September 2018
2018
Deutz, AH; Hille, SC; Sergeyev, YD; Emmerich, MTM
AIP Conference Proceedings
9780735417984
2019
2070
1
20010
none
Candelieri, A., Archetti, F. (2019). Sequential model based optimization with black-box constraints: Feasibility determination via machine learning. In AIP Conference Proceedings. American Institute of Physics Inc. [10.1063/1.5089977].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/408480
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