In this work we present LSEGO, an approach to drive efficient global optimization (EGO), based on LS (least squares) ensemble of metamodels. By means of LS ensemble of metamodels it is possible to estimate the uncertainty of the prediction with any kind of model (not only kriging) and provide an estimate for the expected improvement function. For the problems studied, the proposed LSEGO algorithm has shown to be able to find the global optimum with less number of optimization cycles than required by the classical EGO approach. As more infill points are added per cycle, the faster is the convergence to the global optimum (exploitation) and also the quality improvement of the metamodel in the design space (exploration), specially as the numbe...
We consider a bilevel parameter tuning problem where the goal is to maximize the performance of a gi...
In this paper we investigate global optimization for black-box simulations using metamodels to guide...
This paper addresses the issue of designing experiments for a metamodel that needs to be accurate fo...
In this work we present an approach to create ensemble of metamodels (or weighted averaged surrogate...
The use of approximate models or metamodeling has lead to new areas of research in the optimization ...
International audienceIn the context of optimization, derivatives of the objective function or the c...
Optimization of complex engineering systems is performed using computationally expensive high fideli...
Global optimization techniques have gained much attention in the design of industrial products becau...
AbstractExpensive optimization aims to find the global minimum of a given function within a very lim...
Many practical optimization problems are dynamically changing, and require a tracking of the global ...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This paper introduces a new, metaheuristic optimization algorithm, named an Improved Metaheuristic E...
An important goal of simulation is optimization of the corresponding real system. We focus on simula...
We propose to apply typed Genetic Programming (GP) to the problem of finding surrogate-model ensembl...
The paper is focused on direct optimization of experimental designs of continuous or discrete variab...
We consider a bilevel parameter tuning problem where the goal is to maximize the performance of a gi...
In this paper we investigate global optimization for black-box simulations using metamodels to guide...
This paper addresses the issue of designing experiments for a metamodel that needs to be accurate fo...
In this work we present an approach to create ensemble of metamodels (or weighted averaged surrogate...
The use of approximate models or metamodeling has lead to new areas of research in the optimization ...
International audienceIn the context of optimization, derivatives of the objective function or the c...
Optimization of complex engineering systems is performed using computationally expensive high fideli...
Global optimization techniques have gained much attention in the design of industrial products becau...
AbstractExpensive optimization aims to find the global minimum of a given function within a very lim...
Many practical optimization problems are dynamically changing, and require a tracking of the global ...
The Efficient Global Optimization (EGO) algorithm uses a conditional Gaus-sian Process (GP) to appro...
This paper introduces a new, metaheuristic optimization algorithm, named an Improved Metaheuristic E...
An important goal of simulation is optimization of the corresponding real system. We focus on simula...
We propose to apply typed Genetic Programming (GP) to the problem of finding surrogate-model ensembl...
The paper is focused on direct optimization of experimental designs of continuous or discrete variab...
We consider a bilevel parameter tuning problem where the goal is to maximize the performance of a gi...
In this paper we investigate global optimization for black-box simulations using metamodels to guide...
This paper addresses the issue of designing experiments for a metamodel that needs to be accurate fo...